Exemplo n.º 1
0
    def __init__(self, samples, sa=None, fa=None, a=None):
        """
        A Dataset might have an arbitrary number of attributes for samples,
        features, or the dataset as a whole. However, only the data samples
        themselves are required.

        Parameters
        ----------
        samples : ndarray
          Data samples.  This has to be a two-dimensional (samples x features)
          array. If the samples are not in that format, please consider one of
          the `AttrDataset.from_*` classmethods.
        sa : SampleAttributesCollection
          Samples attributes collection.
        fa : FeatureAttributesCollection
          Features attributes collection.
        a : DatasetAttributesCollection
          Dataset attributes collection.

        """
        # conversions
        if isinstance(samples, list):
            samples = np.array(samples)
        # Check all conditions we need to have for `samples` dtypes
        if not hasattr(samples, 'dtype'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`dtype` attribute that behaves similar to the one of an "
                "array-like.")
        if not hasattr(samples, 'shape'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`shape` attribute that behaves similar to the one of an "
                "array-like.")
        if not len(samples.shape):
            raise ValueError("Only `samples` with at least one axis are "
                             "supported (got: %i)" % len(samples.shape))

        # handling of 1D-samples
        # i.e. 1D is treated as multiple samples with a single feature
        if len(samples.shape) == 1:
            samples = np.atleast_2d(samples).T

        # that's all -- accepted
        self.samples = samples

        # Everything in a dataset (except for samples) is organized in
        # collections
        # Number of samples is .shape[0] for sparse matrix support
        self.sa = SampleAttributesCollection(length=len(self))
        if not sa is None:
            self.sa.update(sa)
        self.fa = FeatureAttributesCollection(length=self.nfeatures)
        if not fa is None:
            self.fa.update(fa)
        self.a = DatasetAttributesCollection()
        if not a is None:
            self.a.update(a)
Exemplo n.º 2
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    def __init__(self, samples, sa=None, fa=None, a=None):
        """
        A Dataset might have an arbitrary number of attributes for samples,
        features, or the dataset as a whole. However, only the data samples
        themselves are required.

        Parameters
        ----------
        samples : ndarray
          Data samples.  This has to be a two-dimensional (samples x features)
          array. If the samples are not in that format, please consider one of
          the `AttrDataset.from_*` classmethods.
        sa : SampleAttributesCollection
          Samples attributes collection.
        fa : FeatureAttributesCollection
          Features attributes collection.
        a : DatasetAttributesCollection
          Dataset attributes collection.

        """
        # conversions
        if isinstance(samples, list):
            samples = np.array(samples)
        # Check all conditions we need to have for `samples` dtypes
        if not hasattr(samples, "dtype"):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`dtype` attribute that behaves similar to the one of an "
                "array-like."
            )
        if not hasattr(samples, "shape"):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`shape` attribute that behaves similar to the one of an "
                "array-like."
            )
        if not len(samples.shape):
            raise ValueError("Only `samples` with at least one axis are " "supported (got: %i)" % len(samples.shape))

        # handling of 1D-samples
        # i.e. 1D is treated as multiple samples with a single feature
        if len(samples.shape) == 1:
            samples = np.atleast_2d(samples).T

        # that's all -- accepted
        self.samples = samples

        # Everything in a dataset (except for samples) is organized in
        # collections
        # Number of samples is .shape[0] for sparse matrix support
        self.sa = SampleAttributesCollection(length=len(self))
        if not sa is None:
            self.sa.update(sa)
        self.fa = FeatureAttributesCollection(length=self.nfeatures)
        if not fa is None:
            self.fa.update(fa)
        self.a = DatasetAttributesCollection()
        if not a is None:
            self.a.update(a)
Exemplo n.º 3
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def gifti_dataset(samples, targets=None, chunks=None):
    """
    Parameters
    ----------
    samples : str or GiftiImage
      GIFTI surface-based data, specified either as a filename or an image.
    targets : scalar or sequence
      Label attribute for each volume in the timeseries.
    chunks : scalar or sequence
      Chunk attribute for each volume in the timeseries.
    """
    node_indices = None
    data_vectors = []
    intents = []

    image = _get_gifti_image(samples)

    for darray in image.darrays:
        intent_string = _gifti_intent_niistring(darray.intent)

        if _gifti_intent_is_data(intent_string):
            data_vectors.append(darray.data)
            intents.append(intent_string)

        elif _gifti_intent_is_node_indices(intent_string):
            node_indices = darray.data

    samples = np.asarray(data_vectors)
    nsamples, nfeatures = samples.shape

    # set sample attributes
    sa = SampleAttributesCollection(length=nsamples)

    sa['intents'] = intents

    if targets is not None:
        sa['targets'] = targets

    if chunks is not None:
        sa['chunks'] = chunks

    # set feature attributes
    fa = FeatureAttributesCollection(length=nfeatures)

    if node_indices is not None:
        fa['node_indices'] = node_indices

    return Dataset(samples=samples, sa=sa, fa=fa)
Exemplo n.º 4
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    def _edit_attr(self, ds, shape):

        attr = dict()
        for key in ds.sa.keys():
            attr[key] = []
            for v in ds.sa[key].value:
                attr[key] += [v for _ in range(shape[1])]

        attr['roi_labels'] = []
        for _ in range(shape[0] / shape[1]):
            for i in range(shape[1]):
                attr['roi_labels'] += ["roi_%02d" % (i + 1)]

        logger.debug(shape)

        return SampleAttributesCollection(attr)
Exemplo n.º 5
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def test_collections():
    sa = SampleAttributesCollection()
    assert_equal(len(sa), 0)

    assert_raises(ValueError, sa.__setitem__, 'test', 0)
    l = range(5)
    sa['test'] = l
    # auto-wrapped
    assert_true(isinstance(sa['test'], ArrayCollectable))
    assert_equal(len(sa), 1)

    # names which are already present in dict interface
    assert_raises(ValueError, sa.__setitem__, 'values', range(5))

    sa_c = copy.deepcopy(sa)
    assert_equal(len(sa), len(sa_c))
    assert_array_equal(sa.test, sa_c.test)
Exemplo n.º 6
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def edit_attr(attr, shape):

    factor = shape[0] / len(attr.targets)

    attr_ = dict()
    for key in attr.keys():
        attr_[key] = []
        for label in attr[key]:
            attr_[key] += [label for i in range(factor)]
    """    
    attr_['roi_labels'] = []
    for j in range(len(attr.targets)):
        for i in range(shape[1]):
            attr_['roi_labels'] += ["roi_%02d" % (i+1)]
    """

    return SampleAttributesCollection(
        attr_), None  #attr_['roi_labels'][:shape[1]]
Exemplo n.º 7
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class AttrDataset(object):
    """Generic storage class for datasets with multiple attributes.

    A dataset consists of four pieces.  The core is a two-dimensional
    array that has variables (so-called `features`) in its columns and
    the associated observations (so-called `samples`) in the rows.  In
    addition a dataset may have any number of attributes for features
    and samples.  Unsurprisingly, these are called 'feature attributes'
    and 'sample attributes'.  Each attribute is a vector of any datatype
    that contains a value per each item (feature or sample). Both types
    of attributes are organized in their respective collections --
    accessible via the `sa` (sample attribute) and `fa` (feature
    attribute) attributes.  Finally, a dataset itself may have any number
    of additional attributes (i.e. a mapper) that are stored in their
    own collection that is accessible via the `a` attribute (see
    examples below).

    Attributes
    ----------
    sa : Collection
      Access to all sample attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as rows in the `samples` array of the dataset.
    fa : Collection
      Access to all feature attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as columns in the `samples` array of the dataset.
    a : Collection
      Access to all dataset attributes, where each attribute is a named
      element of an arbitrary datatype.

    Notes
    -----
    Any dataset might have a mapper attached that is stored as a dataset
    attribute called `mapper`.

    Examples
    --------

    The simplest way to create a dataset is from a 2D array.

    >>> import numpy as np
    >>> from mvpa2.datasets import *
    >>> samples = np.arange(12).reshape((4,3))
    >>> ds = AttrDataset(samples)
    >>> ds.nsamples
    4
    >>> ds.nfeatures
    3
    >>> ds.samples
    array([[ 0,  1,  2],
           [ 3,  4,  5],
           [ 6,  7,  8],
           [ 9, 10, 11]])

    The above dataset can only be used for unsupervised machine-learning
    algorithms, since it doesn't have any targets associated with its
    samples. However, creating a labeled dataset is equally simple.

    >>> ds_labeled = dataset_wizard(samples, targets=range(4))

    Both the labeled and the unlabeled dataset share the same samples
    array. No copying is performed.

    >>> ds.samples is ds_labeled.samples
    True

    If the data should not be shared the samples array has to be copied
    beforehand.

    The targets are available from the samples attributes collection, but
    also via the convenience property `targets`.

    >>> ds_labeled.sa.targets is ds_labeled.targets
    True

    If desired, it is possible to add an arbitrary amount of additional
    attributes. Regardless if their original sequence type they will be
    converted into an array.

    >>> ds_labeled.sa['lovesme'] = [0,0,1,0]
    >>> ds_labeled.sa.lovesme
    array([0, 0, 1, 0])

    An alternative method to create datasets with arbitrary attributes
    is to provide the attribute collections to the constructor itself --
    which would also test for an appropriate size of the given
    attributes:

    >>> fancyds = AttrDataset(samples, sa={'targets': range(4),
    ...                                'lovesme': [0,0,1,0]})
    >>> fancyds.sa.lovesme
    array([0, 0, 1, 0])

    Exactly the same logic applies to feature attributes as well.

    Datasets can be sliced (selecting a subset of samples and/or
    features) similar to arrays. Selection is possible using boolean
    selection masks, index sequences or slicing arguments. The following
    calls for samples selection all result in the same dataset:

    >>> sel1 = ds[np.array([False, True, True])]
    >>> sel2 = ds[[1,2]]
    >>> sel3 = ds[1:3]
    >>> np.all(sel1.samples == sel2.samples)
    True
    >>> np.all(sel2.samples == sel3.samples)
    True

    During selection data is only copied if necessary. If the slicing
    syntax is used the resulting dataset will share the samples with the
    original dataset (here and below we compare .base against both ds.samples
    and its .base for compatibility with NumPy < 1.7)

    >>> sel1.samples.base in (ds.samples.base, ds.samples)
    False
    >>> sel2.samples.base in (ds.samples.base, ds.samples)
    False
    >>> sel3.samples.base in (ds.samples.base, ds.samples)
    True

    For feature selection the syntax is very similar they are just
    represented on the second axis of the samples array. Plain feature
    selection is achieved be keeping all samples and select a subset of
    features (all syntax variants for samples selection are also
    supported for feature selection).

    >>> fsel = ds[:, 1:3]
    >>> fsel.samples
    array([[ 1,  2],
           [ 4,  5],
           [ 7,  8],
           [10, 11]])

    It is also possible to simultaneously selection a subset of samples
    *and* features. Using the slicing syntax now copying will be
    performed.

    >>> fsel = ds[:3, 1:3]
    >>> fsel.samples
    array([[1, 2],
           [4, 5],
           [7, 8]])
    >>> fsel.samples.base in (ds.samples.base, ds.samples)
    True

    Please note that simultaneous selection of samples and features is
    *not* always congruent to array slicing.

    >>> ds[[0,1,2], [1,2]].samples
    array([[1, 2],
           [4, 5],
           [7, 8]])

    Whereas the call: 'ds.samples[[0,1,2], [1,2]]' would not be
    possible. In `AttrDatasets` selection of samples and features is always
    applied individually and independently to each axis.
    """
    def __init__(self, samples, sa=None, fa=None, a=None):
        """
        A Dataset might have an arbitrary number of attributes for samples,
        features, or the dataset as a whole. However, only the data samples
        themselves are required.

        Parameters
        ----------
        samples : ndarray
          Data samples.  This has to be a two-dimensional (samples x features)
          array. If the samples are not in that format, please consider one of
          the `AttrDataset.from_*` classmethods.
        sa : SampleAttributesCollection
          Samples attributes collection.
        fa : FeatureAttributesCollection
          Features attributes collection.
        a : DatasetAttributesCollection
          Dataset attributes collection.

        """
        # conversions
        if isinstance(samples, list):
            samples = np.array(samples)
        # Check all conditions we need to have for `samples` dtypes
        if not hasattr(samples, 'dtype'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`dtype` attribute that behaves similar to the one of an "
                "array-like.")
        if not hasattr(samples, 'shape'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`shape` attribute that behaves similar to the one of an "
                "array-like.")
        if not len(samples.shape):
            raise ValueError("Only `samples` with at least one axis are "
                    "supported (got: %i)" % len(samples.shape))

        # handling of 1D-samples
        # i.e. 1D is treated as multiple samples with a single feature
        if len(samples.shape) == 1:
            samples = np.atleast_2d(samples).T

        # that's all -- accepted
        self.samples = samples

        # Everything in a dataset (except for samples) is organized in
        # collections
        # Number of samples is .shape[0] for sparse matrix support
        self.sa = SampleAttributesCollection(length=len(self))
        if not sa is None:
            self.sa.update(sa)
        self.fa = FeatureAttributesCollection(length=self.nfeatures)
        if not fa is None:
            self.fa.update(fa)
        self.a = DatasetAttributesCollection()
        if not a is None:
            self.a.update(a)


    def init_origids(self, which, attr='origids', mode='new'):
        """Initialize the dataset's 'origids' attribute.

        The purpose of origids is that they allow to track the identity of
        a feature or a sample through the lifetime of a dataset (i.e. subsequent
        feature selections).

        Calling this method will overwrite any potentially existing IDs (of the
        XXX)

        Parameters
        ----------
        which : {'features', 'samples', 'both'}
          An attribute is generated for each feature, sample, or both that
          represents a unique ID.  This ID incorporates the dataset instance ID
          and should allow merging multiple datasets without causing multiple
          identical ID and the resulting dataset.
        attr : str
          Name of the attribute to store the generated IDs in.  By convention
          this should be 'origids' (the default), but might be changed for
          specific purposes.
        mode : {'existing', 'new', 'raise'}, optional
          Action if `attr` is already present in the collection.
          Default behavior is 'new' whenever new ids are generated and
          replace existing values if such are present.  With 'existing' it would
          not alter existing content.  With 'raise' it would raise
          `RuntimeError`.

        Raises
        ------
        `RuntimeError`
          If `mode` == 'raise' and `attr` is already defined
        """
        # now do evil to ensure unique ids across multiple datasets
        # so that they could be merged together
        thisid = str(id(self))
        legal_modes = ('raise', 'existing', 'new')
        if not mode in legal_modes:
            raise ValueError, "Incorrect mode %r. Known are %s." % \
                  (mode, legal_modes)
        if which in ('samples', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.sa)
            ids = np.array(['%s-%i' % (thisid, i)
                                for i in range(self.samples.shape[0])])
            if self.sa.has_key(attr):
                self.sa[attr].value = ids
            else:
                self.sa[attr] = ids
        if which in ('features', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.fa)
            ids = np.array(['%s-%i' % (thisid, i)
                                for i in range(self.samples.shape[1])])
            if self.fa.has_key(attr):
                self.fa[attr].value = ids
            else:
                self.fa[attr] = ids


    def __copy__(self):
        return self.copy(deep=False)


    def __deepcopy__(self, memo=None):
        return self.copy(deep=True, memo=memo)


    def __reduce__(self):
        return (self.__class__,
                    (self.samples,
                     dict(self.sa),
                     dict(self.fa),
                     dict(self.a)))


    def copy(self, deep=True, sa=None, fa=None, a=None, memo=None):
        """Create a copy of a dataset.

        By default this is going to return a deep copy of the dataset, hence no
        data would be shared between the original dataset and its copy.

        Parameters
        ----------
        deep : boolean, optional
          If False, a shallow copy of the dataset is return instead.  The copy
          contains only views of the samples, sample attributes and feature
          attributes, as well as shallow copies of all dataset
          attributes.
        sa : list or None
          List of attributes in the sample attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered. If
          an empty list is given, all attributes are stripped from the copy.
        fa : list or None
          List of attributes in the feature attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        a : list or None
          List of attributes in the dataset attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        memo : dict
          Developers only: This argument is only useful if copy() is called
          inside the __deepcopy__() method and refers to the dict-argument
          `memo` in the Python documentation.
        """
        if __debug__:
            debug('DS_', "Duplicating samples shaped %s"
                         % str(self.samples.shape))
        if deep:
            samples = copy.deepcopy(self.samples, memo)
        else:
            samples = self.samples.view()

        if __debug__:
            debug('DS_', "Create new dataset instance for copy")
        # call the generic init
        out = self.__class__(samples,
                             sa=self.sa.copy(a=sa, deep=deep, memo=memo),
                             fa=self.fa.copy(a=fa, deep=deep, memo=memo),
                             a=self.a.copy(a=a, deep=deep, memo=memo))
        if __debug__:
            debug('DS_', "Return dataset copy %s of source %s"
                         % (_strid(out), _strid(self)))
        return out


    def append(self, other):
        """This method should not be used and will be removed in the future"""
        warning("AttrDataset.append() is deprecated and will be removed. "
                "Instead of ds.append(x) use: ds = vstack((ds, x), a=0)")

        if not self.nfeatures == other.nfeatures:
            raise DatasetError("Cannot merge datasets, because the number of "
                               "features does not match.")

        if not sorted(self.sa.keys()) == sorted(other.sa.keys()):
            raise DatasetError("Cannot merge dataset. This datasets samples "
                               "attributes %s cannot be mapped into the other "
                               "set %s" % (self.sa.keys(), other.sa.keys()))

        # concat the samples as well
        self.samples = np.concatenate((self.samples, other.samples), axis=0)

        # tell the collection the new desired length of all attributes
        self.sa.set_length_check(len(self.samples))
        # concat all samples attributes
        for k, v in other.sa.iteritems():
            self.sa[k].value = np.concatenate((self.sa[k].value, v.value),
                                             axis=0)


    def __getitem__(self, args):
        """
        """
        # uniformize for checks below; it is not a tuple if just single slicing
        # spec is passed
        if not isinstance(args, tuple):
            args = (args,)

        if len(args) > 2:
            raise ValueError("Too many arguments (%i). At most there can be "
                             "two arguments, one for samples selection and one "
                             "for features selection" % len(args))

        # simplify things below and always have samples and feature slicing
        if len(args) == 1:
            args = [args[0], slice(None)]
        else:
            args = [a for a in args]

        samples = None

        # get the intended subset of the samples array
        #
        # need to deal with some special cases to ensure proper behavior
        #
        # ints need to become lists to prevent silent dimensionality changes
        # of the arrays when slicing
        for i, a in enumerate(args):
            if isinstance(a, int):
                args[i] = [a]

        # for simultaneous slicing of numpy arrays we should
        # distinguish the case when one of the args is a slice, so no
        # ix_ is needed
        if __debug__:
            debug('DS_', "Selecting feature/samples of %s" % str(self.samples.shape))
        if isinstance(self.samples, np.ndarray):
            if np.any([isinstance(a, slice) for a in args]):
                samples = self.samples[args[0], args[1]]
            else:
                # works even with bool masks (although without
                # assurance/checking if mask is of actual length as
                # needed, so would work with bogus shorter
                # masks). TODO check in __debug__? or may be just do
                # enforcing of proper dimensions and order manually?
                samples = self.samples[np.ix_(*args)]
        else:
            # in all other cases we have to do the selection sequentially
            #
            # samples subset: only alter if subset is requested
            samples = self.samples[args[0]]
            # features subset
            if not args[1] is slice(None):
                samples = samples[:, args[1]]
        if __debug__:
            debug('DS_', "Selected feature/samples %s" % str(self.samples.shape))
        # and now for the attributes -- we want to maintain the type of the
        # collections
        sa = self.sa.__class__(length=samples.shape[0])
        fa = self.fa.__class__(length=samples.shape[1])
        a = self.a.__class__()

        # per-sample attributes; always needs to run even if slice(None), since
        # we need fresh SamplesAttributes even if they share the data
        for attr in self.sa.values():
            # preserve attribute type
            newattr = attr.__class__(doc=attr.__doc__)
            # slice
            newattr.value = attr.value[args[0]]
            # assign to target collection
            sa[attr.name] = newattr

        # per-feature attributes; always needs to run even if slice(None),
        # since we need fresh SamplesAttributes even if they share the data
        for attr in self.fa.values():
            # preserve attribute type
            newattr = attr.__class__(doc=attr.__doc__)
            # slice
            newattr.value = attr.value[args[1]]
            # assign to target collection
            fa[attr.name] = newattr

        # and finally dataset attributes: this time copying
        for attr in self.a.values():
            # preserve attribute type
            newattr = attr.__class__(name=attr.name, doc=attr.__doc__)
            # do a shallow copy here
            # XXX every DatasetAttribute should have meaningful __copy__ if
            # necessary -- most likely all mappers need to have one
            newattr.value = copy.copy(attr.value)
            # assign to target collection
            a[attr.name] = newattr

        # and after a long way instantiate the new dataset of the same type
        return self.__class__(samples, sa=sa, fa=fa, a=a)


    def __repr_full__(self):
        return "%s(%s, sa=%s, fa=%s, a=%s)" \
                % (self.__class__.__name__,
                   repr(self.samples),
                   repr(self.sa),
                   repr(self.fa),
                   repr(self.a))


    def __str__(self):
        samplesstr = 'x'.join(["%s" % x for x in self.shape])
        samplesstr += '@%s' % self.samples.dtype
        cols = [str(col).replace(col.__class__.__name__, label)
                    for col, label in [(self.sa, 'sa'),
                                       (self.fa, 'fa'),
                                       (self.a, 'a')] if len(col)]
        # include only collections that have content
        return _str(self, samplesstr, *cols)

    __repr__ = {'full' : __repr_full__,
                'str'  : __str__}[__REPR_STYLE__]

    def __array__(self, *args):
        """Provide an 'array' view or copy over dataset.samples

        Parameters
        ----------
        dtype: type, optional
          If provided, passed to .samples.__array__() call

        *args to mimique numpy.ndarray.__array__ behavior which relies
        on the actual number of arguments
        """
        # another possibility would be converting .todense() for sparse data
        # but that might easily kill the machine ;-)
        if not hasattr(self.samples, '__array__'):
            raise RuntimeError(
                "This AttrDataset instance cannot be used like a Numpy array "
                "since its data-container does not provide an '__array__' "
                "methods. Container type is %s." % type(self.samples))
        return self.samples.__array__(*args)


    def __len__(self):
        return self.shape[0]


    @classmethod
    def from_hdf5(cls, source, name=None):
        """Load a Dataset from HDF5 file

        Parameters
        ----------
        source : string or h5py.highlevel.File
          Filename or HDF5's File to load dataset from
        name : string, optional
          If file contains multiple entries at the 1st level, if
          provided, `name` specifies the group to be loaded as the
          AttrDataset.

        Returns
        -------
        AttrDataset

        Raises
        ------
        ValueError
        """
        if not externals.exists('h5py'):
            raise RuntimeError(
                "Missing 'h5py' package -- saving is not possible.")

        import h5py
        from mvpa2.base.hdf5 import hdf2obj

        # look if we got an hdf file instance already
        if isinstance(source, h5py.highlevel.File):
            own_file = False
            hdf = source
        else:
            own_file = True
            hdf = h5py.File(source, 'r')

        if not name is None:
            # some HDF5 subset is requested
            if not name in hdf:
                raise ValueError("Cannot find '%s' group in HDF file %s.  "
                                 "File contains groups: %s"
                                 % (name, source, hdf.keys()))

            # access the group that should contain the dataset
            dsgrp = hdf[name]
            res = hdf2obj(dsgrp)
            if not isinstance(res, AttrDataset):
                # TODO: unittest before committing
                raise ValueError, "%r in %s contains %s not a dataset.  " \
                      "File contains groups: %s." \
                      % (name, source, type(res), hdf.keys())
        else:
            # just consider the whole file
            res = hdf2obj(hdf)
            if not isinstance(res, AttrDataset):
                # TODO: unittest before committing
                raise ValueError, "Failed to load a dataset from %s.  " \
                      "Loaded %s instead." \
                      % (source, type(res))
        if own_file:
            hdf.close()
        return res


    # shortcut properties
    nsamples = property(fget=len)
    nfeatures = property(fget=lambda self:self.shape[1])
    shape = property(fget=lambda self:self.samples.shape)
Exemplo n.º 8
0
class AttrDataset(object):
    """Generic storage class for datasets with multiple attributes.

    A dataset consists of four pieces.  The core is a two-dimensional
    array that has variables (so-called `features`) in its columns and
    the associated observations (so-called `samples`) in the rows.  In
    addition a dataset may have any number of attributes for features
    and samples.  Unsurprisingly, these are called 'feature attributes'
    and 'sample attributes'.  Each attribute is a vector of any datatype
    that contains a value per each item (feature or sample). Both types
    of attributes are organized in their respective collections --
    accessible via the `sa` (sample attribute) and `fa` (feature
    attribute) attributes.  Finally, a dataset itself may have any number
    of additional attributes (i.e. a mapper) that are stored in their
    own collection that is accessible via the `a` attribute (see
    examples below).

    Attributes
    ----------
    sa : Collection
      Access to all sample attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as rows in the `samples` array of the dataset.
    fa : Collection
      Access to all feature attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as columns in the `samples` array of the dataset.
    a : Collection
      Access to all dataset attributes, where each attribute is a named
      element of an arbitrary datatype.

    Notes
    -----
    Any dataset might have a mapper attached that is stored as a dataset
    attribute called `mapper`.

    Examples
    --------

    The simplest way to create a dataset is from a 2D array.

    >>> import numpy as np
    >>> from mvpa2.datasets import *
    >>> samples = np.arange(12).reshape((4,3))
    >>> ds = AttrDataset(samples)
    >>> ds.nsamples
    4
    >>> ds.nfeatures
    3
    >>> ds.samples
    array([[ 0,  1,  2],
           [ 3,  4,  5],
           [ 6,  7,  8],
           [ 9, 10, 11]])

    The above dataset can only be used for unsupervised machine-learning
    algorithms, since it doesn't have any targets associated with its
    samples. However, creating a labeled dataset is equally simple.

    >>> ds_labeled = dataset_wizard(samples, targets=range(4))

    Both the labeled and the unlabeled dataset share the same samples
    array. No copying is performed.

    >>> ds.samples is ds_labeled.samples
    True

    If the data should not be shared the samples array has to be copied
    beforehand.

    The targets are available from the samples attributes collection, but
    also via the convenience property `targets`.

    >>> ds_labeled.sa.targets is ds_labeled.targets
    True

    If desired, it is possible to add an arbitrary amount of additional
    attributes. Regardless if their original sequence type they will be
    converted into an array.

    >>> ds_labeled.sa['lovesme'] = [0,0,1,0]
    >>> ds_labeled.sa.lovesme
    array([0, 0, 1, 0])

    An alternative method to create datasets with arbitrary attributes
    is to provide the attribute collections to the constructor itself --
    which would also test for an appropriate size of the given
    attributes:

    >>> fancyds = AttrDataset(samples, sa={'targets': range(4),
    ...                                'lovesme': [0,0,1,0]})
    >>> fancyds.sa.lovesme
    array([0, 0, 1, 0])

    Exactly the same logic applies to feature attributes as well.

    Datasets can be sliced (selecting a subset of samples and/or
    features) similar to arrays. Selection is possible using boolean
    selection masks, index sequences or slicing arguments. The following
    calls for samples selection all result in the same dataset:

    >>> sel1 = ds[np.array([False, True, True])]
    >>> sel2 = ds[[1,2]]
    >>> sel3 = ds[1:3]
    >>> np.all(sel1.samples == sel2.samples)
    True
    >>> np.all(sel2.samples == sel3.samples)
    True

    During selection data is only copied if necessary. If the slicing
    syntax is used the resulting dataset will share the samples with the
    original dataset.

    >>> sel1.samples.base is ds.samples.base
    False
    >>> sel2.samples.base is ds.samples.base
    False
    >>> sel3.samples.base is ds.samples.base
    True

    For feature selection the syntax is very similar they are just
    represented on the second axis of the samples array. Plain feature
    selection is achieved be keeping all samples and select a subset of
    features (all syntax variants for samples selection are also
    supported for feature selection).

    >>> fsel = ds[:, 1:3]
    >>> fsel.samples
    array([[ 1,  2],
           [ 4,  5],
           [ 7,  8],
           [10, 11]])

    It is also possible to simultaneously selection a subset of samples
    *and* features. Using the slicing syntax now copying will be
    performed.

    >>> fsel = ds[:3, 1:3]
    >>> fsel.samples
    array([[1, 2],
           [4, 5],
           [7, 8]])
    >>> fsel.samples.base is ds.samples.base
    True

    Please note that simultaneous selection of samples and features is
    *not* always congruent to array slicing.

    >>> ds[[0,1,2], [1,2]].samples
    array([[1, 2],
           [4, 5],
           [7, 8]])

    Whereas the call: 'ds.samples[[0,1,2], [1,2]]' would not be
    possible. In `AttrDatasets` selection of samples and features is always
    applied individually and independently to each axis.
    """
    def __init__(self, samples, sa=None, fa=None, a=None):
        """
        A Dataset might have an arbitrary number of attributes for samples,
        features, or the dataset as a whole. However, only the data samples
        themselves are required.

        Parameters
        ----------
        samples : ndarray
          Data samples.  This has to be a two-dimensional (samples x features)
          array. If the samples are not in that format, please consider one of
          the `AttrDataset.from_*` classmethods.
        sa : SampleAttributesCollection
          Samples attributes collection.
        fa : FeatureAttributesCollection
          Features attributes collection.
        a : DatasetAttributesCollection
          Dataset attributes collection.

        """
        # conversions
        if isinstance(samples, list):
            samples = np.array(samples)
        # Check all conditions we need to have for `samples` dtypes
        if not hasattr(samples, 'dtype'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`dtype` attribute that behaves similar to the one of an "
                "array-like.")
        if not hasattr(samples, 'shape'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`shape` attribute that behaves similar to the one of an "
                "array-like.")
        if not len(samples.shape):
            raise ValueError("Only `samples` with at least one axis are "
                             "supported (got: %i)" % len(samples.shape))

        # handling of 1D-samples
        # i.e. 1D is treated as multiple samples with a single feature
        if len(samples.shape) == 1:
            samples = np.atleast_2d(samples).T

        # that's all -- accepted
        self.samples = samples

        # Everything in a dataset (except for samples) is organized in
        # collections
        # Number of samples is .shape[0] for sparse matrix support
        self.sa = SampleAttributesCollection(length=len(self))
        if not sa is None:
            self.sa.update(sa)
        self.fa = FeatureAttributesCollection(length=self.nfeatures)
        if not fa is None:
            self.fa.update(fa)
        self.a = DatasetAttributesCollection()
        if not a is None:
            self.a.update(a)

    def init_origids(self, which, attr='origids', mode='new'):
        """Initialize the dataset's 'origids' attribute.

        The purpose of origids is that they allow to track the identity of
        a feature or a sample through the lifetime of a dataset (i.e. subsequent
        feature selections).

        Calling this method will overwrite any potentially existing IDs (of the
        XXX)

        Parameters
        ----------
        which : {'features', 'samples', 'both'}
          An attribute is generated for each feature, sample, or both that
          represents a unique ID.  This ID incorporates the dataset instance ID
          and should allow merging multiple datasets without causing multiple
          identical ID and the resulting dataset.
        attr : str
          Name of the attribute to store the generated IDs in.  By convention
          this should be 'origids' (the default), but might be changed for
          specific purposes.
        mode : {'existing', 'new', 'raise'}, optional
          Action if `attr` is already present in the collection.
          Default behavior is 'new' whenever new ids are generated and
          replace existing values if such are present.  With 'existing' it would
          not alter existing content.  With 'raise' it would raise
          `RuntimeError`.

        Raises
        ------
        `RuntimeError`
          If `mode` == 'raise' and `attr` is already defined
        """
        # now do evil to ensure unique ids across multiple datasets
        # so that they could be merged together
        thisid = str(id(self))
        legal_modes = ('raise', 'existing', 'new')
        if not mode in legal_modes:
            raise ValueError, "Incorrect mode %r. Known are %s." % \
                  (mode, legal_modes)
        if which in ('samples', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.sa)
            ids = np.array(
                ['%s-%i' % (thisid, i) for i in xrange(self.samples.shape[0])])
            if self.sa.has_key(attr):
                self.sa[attr].value = ids
            else:
                self.sa[attr] = ids
        if which in ('features', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.fa)
            ids = np.array(
                ['%s-%i' % (thisid, i) for i in xrange(self.samples.shape[1])])
            if self.fa.has_key(attr):
                self.fa[attr].value = ids
            else:
                self.fa[attr] = ids

    def __copy__(self):
        return self.copy(deep=False)

    def __deepcopy__(self, memo=None):
        return self.copy(deep=True, memo=memo)

    def __reduce__(self):
        return (self.__class__, (self.samples, dict(self.sa), dict(self.fa),
                                 dict(self.a)))

    def copy(self, deep=True, sa=None, fa=None, a=None, memo=None):
        """Create a copy of a dataset.

        By default this is going to return a deep copy of the dataset, hence no
        data would be shared between the original dataset and its copy.

        Parameters
        ----------
        deep : boolean, optional
          If False, a shallow copy of the dataset is return instead.  The copy
          contains only views of the samples, sample attributes and feature
          attributes, as well as shallow copies of all dataset
          attributes.
        sa : list or None
          List of attributes in the sample attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered. If
          an empty list is given, all attributes are stripped from the copy.
        fa : list or None
          List of attributes in the feature attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        a : list or None
          List of attributes in the dataset attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        memo : dict
          Developers only: This argument is only useful if copy() is called
          inside the __deepcopy__() method and refers to the dict-argument
          `memo` in the Python documentation.
        """
        if __debug__:
            debug('DS_',
                  "Duplicating samples shaped %s" % str(self.samples.shape))
        if deep:
            samples = copy.deepcopy(self.samples, memo)
        else:
            samples = self.samples.view()

        if __debug__:
            debug('DS_', "Create new dataset instance for copy")
        # call the generic init
        out = self.__class__(samples,
                             sa=self.sa.copy(a=sa, deep=deep, memo=memo),
                             fa=self.fa.copy(a=fa, deep=deep, memo=memo),
                             a=self.a.copy(a=a, deep=deep, memo=memo))
        if __debug__:
            debug(
                'DS_', "Return dataset copy %s of source %s" %
                (_strid(out), _strid(self)))
        return out

    def append(self, other):
        """Append the content of a Dataset.

        Parameters
        ----------
        other : AttrDataset
          The content of this dataset will be append.

        Notes
        -----
        No dataset attributes, or feature attributes will be merged!  These
        respective properties of the *other* dataset are neither checked for
        compatibility nor copied over to this dataset. However, all samples
        attributes will be concatenated with the existing ones.
        """
        if not self.nfeatures == other.nfeatures:
            raise DatasetError("Cannot merge datasets, because the number of "
                               "features does not match.")

        if not sorted(self.sa.keys()) == sorted(other.sa.keys()):
            raise DatasetError("Cannot merge dataset. This datasets samples "
                               "attributes %s cannot be mapped into the other "
                               "set %s" % (self.sa.keys(), other.sa.keys()))

        # concat the samples as well
        self.samples = np.concatenate((self.samples, other.samples), axis=0)

        # tell the collection the new desired length of all attributes
        self.sa.set_length_check(len(self.samples))
        # concat all samples attributes
        for k, v in other.sa.iteritems():
            self.sa[k].value = np.concatenate((self.sa[k].value, v.value),
                                              axis=0)

    def __getitem__(self, args):
        """
        """
        # uniformize for checks below; it is not a tuple if just single slicing
        # spec is passed
        if not isinstance(args, tuple):
            args = (args, )

        if len(args) > 2:
            raise ValueError(
                "Too many arguments (%i). At most there can be "
                "two arguments, one for samples selection and one "
                "for features selection" % len(args))

        # simplify things below and always have samples and feature slicing
        if len(args) == 1:
            args = [args[0], slice(None)]
        else:
            args = [a for a in args]

        samples = None

        # get the intended subset of the samples array
        #
        # need to deal with some special cases to ensure proper behavior
        #
        # ints need to become lists to prevent silent dimensionality changes
        # of the arrays when slicing
        for i, a in enumerate(args):
            if isinstance(a, int):
                args[i] = [a]

        # for simultaneous slicing of numpy arrays we should
        # distinguish the case when one of the args is a slice, so no
        # ix_ is needed
        if __debug__:
            debug('DS_',
                  "Selecting feature/samples of %s" % str(self.samples.shape))
        if isinstance(self.samples, np.ndarray):
            if np.any([isinstance(a, slice) for a in args]):
                samples = self.samples[args[0], args[1]]
            else:
                # works even with bool masks (although without
                # assurance/checking if mask is of actual length as
                # needed, so would work with bogus shorter
                # masks). TODO check in __debug__? or may be just do
                # enforcing of proper dimensions and order manually?
                samples = self.samples[np.ix_(*args)]
        else:
            # in all other cases we have to do the selection sequentially
            #
            # samples subset: only alter if subset is requested
            samples = self.samples[args[0]]
            # features subset
            if not args[1] is slice(None):
                samples = samples[:, args[1]]
        if __debug__:
            debug('DS_',
                  "Selected feature/samples %s" % str(self.samples.shape))
        # and now for the attributes -- we want to maintain the type of the
        # collections
        sa = self.sa.__class__(length=samples.shape[0])
        fa = self.fa.__class__(length=samples.shape[1])
        a = self.a.__class__()

        # per-sample attributes; always needs to run even if slice(None), since
        # we need fresh SamplesAttributes even if they share the data
        for attr in self.sa.values():
            # preserve attribute type
            newattr = attr.__class__(doc=attr.__doc__)
            # slice
            newattr.value = attr.value[args[0]]
            # assign to target collection
            sa[attr.name] = newattr

        # per-feature attributes; always needs to run even if slice(None),
        # since we need fresh SamplesAttributes even if they share the data
        for attr in self.fa.values():
            # preserve attribute type
            newattr = attr.__class__(doc=attr.__doc__)
            # slice
            newattr.value = attr.value[args[1]]
            # assign to target collection
            fa[attr.name] = newattr

        # and finally dataset attributes: this time copying
        for attr in self.a.values():
            # preserve attribute type
            newattr = attr.__class__(name=attr.name, doc=attr.__doc__)
            # do a shallow copy here
            # XXX every DatasetAttribute should have meaningful __copy__ if
            # necessary -- most likely all mappers need to have one
            newattr.value = copy.copy(attr.value)
            # assign to target collection
            a[attr.name] = newattr

        # and after a long way instantiate the new dataset of the same type
        return self.__class__(samples, sa=sa, fa=fa, a=a)

    def __repr_full__(self):
        return "%s(%s, sa=%s, fa=%s, a=%s)" \
                % (self.__class__.__name__,
                   repr(self.samples),
                   repr(self.sa),
                   repr(self.fa),
                   repr(self.a))

    def __str__(self):
        samplesstr = 'x'.join(["%s" % x for x in self.shape])
        samplesstr += '@%s' % self.samples.dtype
        cols = [
            str(col).replace(col.__class__.__name__, label)
            for col, label in [(self.sa, 'sa'), (self.fa, 'fa'), (self.a, 'a')]
            if len(col)
        ]
        # include only collections that have content
        return _str(self, samplesstr, *cols)

    __repr__ = {'full': __repr_full__, 'str': __str__}[__REPR_STYLE__]

    def __array__(self, *args):
        """Provide an 'array' view or copy over dataset.samples

        Parameters
        ----------
        dtype: type, optional
          If provided, passed to .samples.__array__() call

        *args to mimique numpy.ndarray.__array__ behavior which relies
        on the actual number of arguments
        """
        # another possibility would be converting .todense() for sparse data
        # but that might easily kill the machine ;-)
        if not hasattr(self.samples, '__array__'):
            raise RuntimeError(
                "This AttrDataset instance cannot be used like a Numpy array "
                "since its data-container does not provide an '__array__' "
                "methods. Container type is %s." % type(self.samples))
        return self.samples.__array__(*args)

    def __len__(self):
        return self.shape[0]

    @classmethod
    def from_hdf5(cls, source, name=None):
        """Load a Dataset from HDF5 file

        Parameters
        ----------
        source : string or h5py.highlevel.File
          Filename or HDF5's File to load dataset from
        name : string, optional
          If file contains multiple entries at the 1st level, if
          provided, `name` specifies the group to be loaded as the
          AttrDataset.

        Returns
        -------
        AttrDataset

        Raises
        ------
        ValueError
        """
        if not externals.exists('h5py'):
            raise RuntimeError(
                "Missing 'h5py' package -- saving is not possible.")

        import h5py
        from mvpa2.base.hdf5 import hdf2obj

        # look if we got an hdf file instance already
        if isinstance(source, h5py.highlevel.File):
            own_file = False
            hdf = source
        else:
            own_file = True
            hdf = h5py.File(source, 'r')

        if not name is None:
            # some HDF5 subset is requested
            if not name in hdf:
                raise ValueError("Cannot find '%s' group in HDF file %s.  "
                                 "File contains groups: %s" %
                                 (name, source, hdf.keys()))

            # access the group that should contain the dataset
            dsgrp = hdf[name]
            res = hdf2obj(dsgrp)
            if not isinstance(res, AttrDataset):
                # TODO: unittest before committing
                raise ValueError, "%r in %s contains %s not a dataset.  " \
                      "File contains groups: %s." \
                      % (name, source, type(res), hdf.keys())
        else:
            # just consider the whole file
            res = hdf2obj(hdf)
            if not isinstance(res, AttrDataset):
                # TODO: unittest before committing
                raise ValueError, "Failed to load a dataset from %s.  " \
                      "Loaded %s instead." \
                      % (source, type(res))
        if own_file:
            hdf.close()
        return res

    # shortcut properties
    nsamples = property(fget=len)
    nfeatures = property(fget=lambda self: self.shape[1])
    shape = property(fget=lambda self: self.samples.shape)
Exemplo n.º 9
0
def from_niml(dset, fa_labels=[], sa_labels=[], a_labels=[]):
    '''Convert a NIML dataset to a Dataset

    Parameters
    ----------
    dset: dict
        Dictionary with NIML key-value pairs, such as obtained from
        mvpa2.support.nibabel.afni_niml_dset.read()
    fa_labels: list
        Keys in dset that are enforced to be feature attributes
    sa_labels: list
        Keys in dset that are enforced to be sample attributes
    a_labels: list
        Keys in dset that are enforced to be dataset attributes

    Returns
    -------
    dataset: mvpa2.base.Dataset
        a PyMVPA Dataset
    '''

    # check for singleton element
    if type(dset) is list and len(dset) == 1:
        # recursive call
        return from_niml(dset[0])

    if not type(dset) is dict:
        raise ValueError("Expected a dict")

    if not 'data' in dset:
        raise ValueError("dset with no data?")

    data = dset['data']
    if len(data.shape) == 1:
        nfeatures = data.shape[0]
        nsamples = 1
    else:
        nfeatures, nsamples = data.shape

    # some labels have predefined destinations
    sa_labels_ = ['labels', 'stats', 'chunks', 'targets'] + sa_labels
    fa_labels_ = ['node_indices', 'center_ids'] + fa_labels
    a_labels_ = ['history'] + a_labels
    ignore_labels = ('data', 'dset_type')

    sa = SampleAttributesCollection(length=nsamples)
    fa = FeatureAttributesCollection(length=nfeatures)
    a = DatasetAttributesCollection()

    labels_collections = [(sa_labels_, sa),
                          (fa_labels_, fa),
                          (a_labels_, a)]

    infix2collection = {'sa': sa,
                        'fa': fa,
                        'a': a}

    infix2length = {'sa': nsamples, 'fa': nfeatures}

    for k, v in dset.iteritems():
        if k in ignore_labels:
            continue

        if k.startswith(_PYMVPA_PREFIX + _PYMVPA_SEP):
            # special PYVMPA field - do the proper conversion
            k_split = k.split(_PYMVPA_SEP)
            if len(k_split) > 2:
                infix = k_split[1].lower()
                collection = infix2collection.get(infix, None)
                if not collection is None:
                    short_k = _PYMVPA_SEP.join(k_split[2:])
                    expected_length = infix2length.get(infix, None)
                    if expected_length:
                        if isinstance(v, np.ndarray) and np.dtype == np.str_:
                            v = str(v)

                        while isinstance(v, basestring):
                            # strings are seperated by ';'
                            # XXX what if this is part of the value
                            # intended by the user?
                            v = v.split(';')

                        if expected_length != len(v):
                            raise ValueError("Unexpected length: %d != %d" %
                                             (expected_length, len(v)))

                        v = ArrayCollectable(v, length=expected_length)

                    collection[short_k] = v
                    continue

        found_label = False

        for label, collection in labels_collections:
            if k in label:
                collection[k] = v
                found_label = True
                break

        if found_label:
            continue

        # try to be smart and deduce this from dimensions.
        # this only works if nfeatures!=nsamples otherwise it would be
        # ambiguous
        # XXX is this ugly?
        if nfeatures != nsamples:
            try:
                n = len(v)
                if n == nfeatures:
                    fa[k] = v
                    continue
                elif n == nsamples:
                    sa[k] = v
                    continue
            except:
                pass

        # don't know what this is - make it a general attribute
        a[k] = v

    ds = Dataset(np.transpose(data), sa=sa, fa=fa, a=a)

    return ds
Exemplo n.º 10
0
iplv = mat['iPLV']
ds_list = []
runs = []
for i in range(iplv.shape[-1]):
    ref = iplv[0, i]
    data = mat[ref][()]
    ds_list.append(data)
    run = [i+1 for _ in range(data.shape[0])]
    runs.append(run)

ds_ = np.vstack(ds_list)

sa = SampleAttributesCollection({
    'targets': np.hstack(runs),
    'chunks': np.hstack(runs),
    'runs': np.hstack(runs),
    'subject': np.ones(ds_.shape[0]),
    'file': ["Subj=1_connectivity_individualalpha.mat" for _ in range(ds_.shape[0])]
})

fa = FeatureAttributesCollection({'matrix_values':np.ones(ds_.shape[1])})
a = DatasetAttributesCollection({'data_path':'/media/robbis/DATA/meg/hcp/', 
                                 'experiment':'hcp', 
                                 })

ds = Dataset(ds_, sa=sa, a=a, fa=fa)

mat.close()

nan_mask = np.logical_not(np.isnan(ds.samples))
keep_idx = np.bool_(np.sum(nan_mask, axis=1))
Exemplo n.º 11
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 def lean_errorfx(ds):#Node):
     #def __call__(self, ds):
         assert_collections_equal(ds.sa, target_sa)
         # since equal, we could just replace with a blank one
         ds.sa = SampleAttributesCollection()
         return ds
Exemplo n.º 12
0
class AttrDataset(object):
    """Generic storage class for datasets with multiple attributes.

    A dataset consists of four pieces.  The core is a two-dimensional
    array that has variables (so-called `features`) in its columns and
    the associated observations (so-called `samples`) in the rows.  In
    addition a dataset may have any number of attributes for features
    and samples.  Unsurprisingly, these are called 'feature attributes'
    and 'sample attributes'.  Each attribute is a vector of any datatype
    that contains a value per each item (feature or sample). Both types
    of attributes are organized in their respective collections --
    accessible via the `sa` (sample attribute) and `fa` (feature
    attribute) attributes.  Finally, a dataset itself may have any number
    of additional attributes (i.e. a mapper) that are stored in their
    own collection that is accessible via the `a` attribute (see
    examples below).

    Attributes
    ----------
    sa : Collection
      Access to all sample attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as rows in the `samples` array of the dataset.
    fa : Collection
      Access to all feature attributes, where each attribute is a named
      vector (1d-array) of an arbitrary datatype, with as many elements
      as columns in the `samples` array of the dataset.
    a : Collection
      Access to all dataset attributes, where each attribute is a named
      element of an arbitrary datatype.

    Notes
    -----
    Any dataset might have a mapper attached that is stored as a dataset
    attribute called `mapper`.

    Examples
    --------

    The simplest way to create a dataset is from a 2D array.

    >>> import numpy as np
    >>> from mvpa2.datasets import *
    >>> samples = np.arange(12).reshape((4,3))
    >>> ds = AttrDataset(samples)
    >>> ds.nsamples
    4
    >>> ds.nfeatures
    3
    >>> ds.samples
    array([[ 0,  1,  2],
           [ 3,  4,  5],
           [ 6,  7,  8],
           [ 9, 10, 11]])

    The above dataset can only be used for unsupervised machine-learning
    algorithms, since it doesn't have any targets associated with its
    samples. However, creating a labeled dataset is equally simple.

    >>> ds_labeled = dataset_wizard(samples, targets=range(4))

    Both the labeled and the unlabeled dataset share the same samples
    array. No copying is performed.

    >>> ds.samples is ds_labeled.samples
    True

    If the data should not be shared the samples array has to be copied
    beforehand.

    The targets are available from the samples attributes collection, but
    also via the convenience property `targets`.

    >>> ds_labeled.sa.targets is ds_labeled.targets
    True

    If desired, it is possible to add an arbitrary amount of additional
    attributes. Regardless if their original sequence type they will be
    converted into an array.

    >>> ds_labeled.sa['lovesme'] = [0,0,1,0]
    >>> ds_labeled.sa.lovesme
    array([0, 0, 1, 0])

    An alternative method to create datasets with arbitrary attributes
    is to provide the attribute collections to the constructor itself --
    which would also test for an appropriate size of the given
    attributes:

    >>> fancyds = AttrDataset(samples, sa={'targets': range(4),
    ...                                'lovesme': [0,0,1,0]})
    >>> fancyds.sa.lovesme
    array([0, 0, 1, 0])

    Exactly the same logic applies to feature attributes as well.

    Datasets can be sliced (selecting a subset of samples and/or
    features) similar to arrays. Selection is possible using boolean
    selection masks, index sequences or slicing arguments. The following
    calls for samples selection all result in the same dataset:

    >>> sel1 = ds[np.array([False, True, True])]
    >>> sel2 = ds[[1,2]]
    >>> sel3 = ds[1:3]
    >>> np.all(sel1.samples == sel2.samples)
    True
    >>> np.all(sel2.samples == sel3.samples)
    True

    During selection data is only copied if necessary. If the slicing
    syntax is used the resulting dataset will share the samples with the
    original dataset.

    >>> sel1.samples.base is ds.samples.base
    False
    >>> sel2.samples.base is ds.samples.base
    False
    >>> sel3.samples.base is ds.samples.base
    True

    For feature selection the syntax is very similar they are just
    represented on the second axis of the samples array. Plain feature
    selection is achieved be keeping all samples and select a subset of
    features (all syntax variants for samples selection are also
    supported for feature selection).

    >>> fsel = ds[:, 1:3]
    >>> fsel.samples
    array([[ 1,  2],
           [ 4,  5],
           [ 7,  8],
           [10, 11]])

    It is also possible to simultaneously selection a subset of samples
    *and* features. Using the slicing syntax now copying will be
    performed.

    >>> fsel = ds[:3, 1:3]
    >>> fsel.samples
    array([[1, 2],
           [4, 5],
           [7, 8]])
    >>> fsel.samples.base is ds.samples.base
    True

    Please note that simultaneous selection of samples and features is
    *not* always congruent to array slicing.

    >>> ds[[0,1,2], [1,2]].samples
    array([[1, 2],
           [4, 5],
           [7, 8]])

    Whereas the call: 'ds.samples[[0,1,2], [1,2]]' would not be
    possible. In `AttrDatasets` selection of samples and features is always
    applied individually and independently to each axis.
    """
    def __init__(self, samples, sa=None, fa=None, a=None):
        """
        A Dataset might have an arbitrary number of attributes for samples,
        features, or the dataset as a whole. However, only the data samples
        themselves are required.

        Parameters
        ----------
        samples : ndarray
          Data samples.  This has to be a two-dimensional (samples x features)
          array. If the samples are not in that format, please consider one of
          the `AttrDataset.from_*` classmethods.
        sa : SampleAttributesCollection
          Samples attributes collection.
        fa : FeatureAttributesCollection
          Features attributes collection.
        a : DatasetAttributesCollection
          Dataset attributes collection.

        """
        # conversions
        if isinstance(samples, list):
            samples = np.array(samples)
        # Check all conditions we need to have for `samples` dtypes
        if not hasattr(samples, 'dtype'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`dtype` attribute that behaves similar to the one of an "
                "array-like.")
        if not hasattr(samples, 'shape'):
            raise ValueError(
                "AttrDataset only supports dtypes as samples that have a "
                "`shape` attribute that behaves similar to the one of an "
                "array-like.")
        if not len(samples.shape):
            raise ValueError("Only `samples` with at least one axis are "
                    "supported (got: %i)" % len(samples.shape))

        # handling of 1D-samples
        # i.e. 1D is treated as multiple samples with a single feature
        if len(samples.shape) == 1:
            samples = np.atleast_2d(samples).T

        # that's all -- accepted
        self.samples = samples

        # Everything in a dataset (except for samples) is organized in
        # collections
        # Number of samples is .shape[0] for sparse matrix support
        self.sa = SampleAttributesCollection(length=len(self))
        if not sa is None:
            self.sa.update(sa)
        self.fa = FeatureAttributesCollection(length=self.nfeatures)
        if not fa is None:
            self.fa.update(fa)
        self.a = DatasetAttributesCollection()
        if not a is None:
            self.a.update(a)


    def init_origids(self, which, attr='origids', mode='new'):
        """Initialize the dataset's 'origids' attribute.

        The purpose of origids is that they allow to track the identity of
        a feature or a sample through the lifetime of a dataset (i.e. subsequent
        feature selections).

        Calling this method will overwrite any potentially existing IDs (of the
        XXX)

        Parameters
        ----------
        which : {'features', 'samples', 'both'}
          An attribute is generated for each feature, sample, or both that
          represents a unique ID.  This ID incorporates the dataset instance ID
          and should allow merging multiple datasets without causing multiple
          identical ID and the resulting dataset.
        attr : str
          Name of the attribute to store the generated IDs in.  By convention
          this should be 'origids' (the default), but might be changed for
          specific purposes.
        mode : {'existing', 'new', 'raise'}, optional
          Action if `attr` is already present in the collection.
          Default behavior is 'new' whenever new ids are generated and
          replace existing values if such are present.  With 'existing' it would
          not alter existing content.  With 'raise' it would raise
          `RuntimeError`.

        Raises
        ------
        `RuntimeError`
          If `mode` == 'raise' and `attr` is already defined
        """
        # now do evil to ensure unique ids across multiple datasets
        # so that they could be merged together
        thisid = str(id(self))
        legal_modes = ('raise', 'existing', 'new')
        if not mode in legal_modes:
            raise ValueError, "Incorrect mode %r. Known are %s." % \
                  (mode, legal_modes)
        if which in ('samples', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.sa)
            ids = np.array(['%s-%i' % (thisid, i)
                                for i in xrange(self.samples.shape[0])])
            if self.sa.has_key(attr):
                self.sa[attr].value = ids
            else:
                self.sa[attr] = ids
        if which in ('features', 'both'):
            if attr in self.sa:
                if mode == 'existing':
                    return
                elif mode == 'raise':
                    raise RuntimeError, \
                          "Attribute %r already known to %s" % (attr, self.fa)
            ids = np.array(['%s-%i' % (thisid, i)
                                for i in xrange(self.samples.shape[1])])
            if self.fa.has_key(attr):
                self.fa[attr].value = ids
            else:
                self.fa[attr] = ids


    def __copy__(self):
        return self.copy(deep=False)


    def __deepcopy__(self, memo=None):
        return self.copy(deep=True, memo=memo)


    def __reduce__(self):
        return (self.__class__,
                    (self.samples,
                     dict(self.sa),
                     dict(self.fa),
                     dict(self.a)))


    def copy(self, deep=True, sa=None, fa=None, a=None, memo=None):
        """Create a copy of a dataset.

        By default this is going to return a deep copy of the dataset, hence no
        data would be shared between the original dataset and its copy.

        Parameters
        ----------
        deep : boolean, optional
          If False, a shallow copy of the dataset is return instead.  The copy
          contains only views of the samples, sample attributes and feature
          attributes, as well as shallow copies of all dataset
          attributes.
        sa : list or None
          List of attributes in the sample attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered. If
          an empty list is given, all attributes are stripped from the copy.
        fa : list or None
          List of attributes in the feature attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        a : list or None
          List of attributes in the dataset attributes collection to include in
          the copy of the dataset. If `None` all attributes are considered If
          an empty list is given, all attributes are stripped from the copy.
        memo : dict
          Developers only: This argument is only useful if copy() is called
          inside the __deepcopy__() method and refers to the dict-argument
          `memo` in the Python documentation.
        """
        if __debug__:
            debug('DS_', "Duplicating samples shaped %s"
                         % str(self.samples.shape))
        if deep:
            samples = copy.deepcopy(self.samples, memo)
        else:
            samples = self.samples.view()

        if __debug__:
            debug('DS_', "Create new dataset instance for copy")
        # call the generic init
        out = self.__class__(samples,
                             sa=self.sa.copy(a=sa, deep=deep, memo=memo),
                             fa=self.fa.copy(a=fa, deep=deep, memo=memo),
                             a=self.a.copy(a=a, deep=deep, memo=memo))
        if __debug__:
            debug('DS_', "Return dataset copy %s of source %s"
                         % (_strid(out), _strid(self)))
        return out

    def append(self, other):
        """This method should not be used and will be removed in the future"""
        warning("AttrDataset.append() is deprecated and will be removed. "
                "Instead of ds.append(x) use: ds = vstack((ds, x), a=0)")

        if not self.nfeatures == other.nfeatures:
            raise DatasetError("Cannot merge datasets, because the number of "
                               "features does not match.")

        if not sorted(self.sa.keys()) == sorted(other.sa.keys()):
            raise DatasetError("Cannot merge dataset. This datasets samples "
                               "attributes %s cannot be mapped into the other "
                               "set %s" % (self.sa.keys(), other.sa.keys()))

        # concat the samples as well
        self.samples = np.concatenate((self.samples, other.samples), axis=0)

        # tell the collection the new desired length of all attributes
        self.sa.set_length_check(len(self.samples))
        # concat all samples attributes
        for k, v in other.sa.iteritems():
            self.sa[k].value = np.concatenate((self.sa[k].value, v.value),
                                             axis=0)