Ejemplo n.º 1
0
Archivo: tf.py Proyecto: HANNATH/vsm
def tf_fn(ctx_sbls):
    """
    The map function for vsm.model.TfMulti. Takes a list of documents
    as slices and returns a count matrix.
    
    :param ctx_sbls: list of documents as slices.
    :type ctx_sbls: list of slices

    :returns: a count matrix
    """
    offset = ctx_sbls[0].start
    corpus = _corpus[offset: ctx_sbls[-1].stop]
    slices = [slice(s.start-offset, s.stop-offset) for s in ctx_sbls]
    return count_matrix(corpus, slices, _V.value)
Ejemplo n.º 2
0
Archivo: tf.py Proyecto: xiayanchen/vsm
def tf_fn(ctx_sbls):
    """
    The map function for vsm.model.TfMulti. Takes a list of documents
    as slices and returns a count matrix.
    
    :param ctx_sbls: list of documents as slices.
    :type ctx_sbls: list of slices

    :returns: a count matrix
    """
    offset = ctx_sbls[0].start
    corpus = _corpus[offset:ctx_sbls[-1].stop]
    slices = [slice(s.start - offset, s.stop - offset) for s in ctx_sbls]
    return count_matrix(corpus, slices, _V.value)
Ejemplo n.º 3
0
Archivo: tf.py Proyecto: HANNATH/vsm
 def train(self):
     """
     Counts word-type occurrences per context and stores the results in
     `self.matrix`.
     """
     self.matrix = count_matrix(self.corpus, self.docs, self.V)
Ejemplo n.º 4
0
Archivo: tf.py Proyecto: xiayanchen/vsm
 def train(self):
     """
     Counts word-type occurrences per context and stores the results in
     `self.matrix`.
     """
     self.matrix = count_matrix(self.corpus, self.docs, self.V)