def train_predict_test(subject,clf,X,X_test,enhance_size = 0):

	filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
	data_grouped_by_hour = load_grouped_train_data('preprocessed/cnn/', subject, filenames_grouped_by_hour)

	
	X, y = generate_overlapped_data(data_grouped_by_hour, overlap_size=10,
	                                window_size=X.shape[-1],
	                                overlap_interictal=True,
	                                overlap_preictal=True)

	X, scalers = scale_across_time(X, x_test=None)

	X_test, _ = scale_across_time(X_test, x_test=None, scalers=scalers)


	print X.shape
	X = X.reshape(X.shape[0],X.shape[1]*X.shape[2]*X.shape[3])
	X_test = X_test.reshape(X_test.shape[0],X_test.shape[1]*X_test.shape[2]*X_test.shape[3])
	X,xt,y,yt = train_test_split(X,y,test_size = .25)		
	

	print "train size", X.shape
	print "test_size", xt.shape

	#print "done loading"
	clf.fit(X)

	preds_proba = clf.predict(X_test)

	
	#print preds_proba.shape
	validation_preds = clf.predict(xt)

	return preds_proba,list(validation_preds),list(yt)
def train_predict_test_cnn(subject,clf,X,X_test,enhance_size = 0):
        filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
        data_grouped_by_hour = load_grouped_train_data('preprocessed/cnn/', subject, filenames_grouped_by_hour)

        X, y = generate_overlapped_data(data_grouped_by_hour, overlap_size=10,
	                                window_size=X.shape[-1],
	                                overlap_interictal=True,
	                                overlap_preictal=True)

        X, scalers = scale_across_time(X, x_test=None)

        X_test, _ = scale_across_time(X_test, x_test=None, scalers=scalers)
#	X,xt,y,yt = split_evenly(X,y,test_size = .5)
  #      if enhance_size > 0:
   #             X,y = enhance_data(X,y,enhance_size,cnn=True)
    #            xt,yt = enhance_data(xt,yt,enhance_size/2,cnn=True)
        X, xt, y, yt = train_test_split(X, y, test_size=0.25, random_state=42)
        print "train size", X.shape
        print "test_size", xt.shape

        preds_proba = np.zeros(( X.shape[1], X_test.shape[0] ))
        val_proba = np.zeros(( xt.shape[1], xt.shape[0] ))
        weighting = np.zeros((X.shape[1],))

        for i in range(0, X.shape[1]):
                print "Progress: " + str(100*i/X.shape[1]) + '%'
                X_train = X[:,i,:,:]
                xt_train = xt[:,i,:,:]
                weighting[i], val_proba[i,] = clf.fit(X_train,y,xt_train,yt)


                train_loss = np.array([])
                valid_loss = np.array([])
                X_test_subset = X_test[:,i,:,:]
                preds_proba[i,] = clf.predict_proba(X_test_subset)

        #idx = np.argmax(weighting)
        sc = np.amax(weighting)
        print "Best score:" + str(sc)
        weighting -= weighting.min()
        weighting /= weighting.sum()
        #preds_proba = preds_proba[idx,]
        preds_proba = np.average(preds_proba, axis=0, weights=weighting)

        preds_scaled = preds_proba
        #preds_scaled = min_max_scale(preds_proba)
        #validation_preds = val_proba[idx,]
        validation_preds = np.average(val_proba, axis=0, weights=weighting)


        return preds_scaled,preds_proba,list(validation_preds),list(yt),train_loss,valid_loss
def plot_features(subject, data_path, model_path, test_labels, dataset='test'):
    with open(model_path + '/' + subject + '.pickle', 'rb') as f:
        state_dict = cPickle.load(f)
    cnn = ConvNet(state_dict['params'])
    cnn.set_weights(state_dict['weights'])
    scalers = state_dict['scalers']

    if dataset == 'test':
        d = load_test_data(data_path, subject)
        x = d['x']
        y = test_labels['preictal']
    elif dataset == 'train':
        d = load_train_data(data_path, subject)
        x, y = d['x'], d['y']
    else:
        raise ValueError('dataset')

    x, _ = scale_across_time(x, x_test=None, scalers=scalers) if state_dict['params']['scale_time'] \
        else scale_across_features(x, x_test=None, scalers=scalers)

    cnn.batch_size.set_value(x.shape[0])
    get_features = theano.function([cnn.x, Param(cnn.training_mode, default=0)], cnn.feature_extractor.output,
                                 allow_input_downcast=True)

    logits_test = get_features(x)
    model = TSNE(n_components=2, random_state=0)
    z = model.fit_transform(np.float64(logits_test))
    plt.scatter(z[:, 0], z[:, 1], s=60, c=y)
    plt.show()
Example #4
0
def plot_train_probs(subject, data_path, model_path):
    with open(model_path + '/' + subject + '.pickle', 'rb') as f:
        state_dict = pickle.load(f)
    cnn = ConvNet(state_dict['params'])
    cnn.set_weights(state_dict['weights'])
    scalers = state_dict['scalers']

    d = load_train_data(data_path, subject)
    x, y = d['x'], d['y']

    x, _ = scale_across_time(x, x_test=None, scalers=scalers) if state_dict['params']['scale_time'] \
        else scale_across_features(x, x_test=None, scalers=scalers)

    cnn.batch_size.set_value(x.shape[0])
    probs = cnn.get_test_proba(x)

    fpr, tpr, threshold = roc_curve(y, probs)
    c = np.sqrt((1 - tpr)**2 + fpr**2)
    opt_threshold = threshold[np.where(c == np.min(c))[0]]
    print(opt_threshold)

    x_coords = np.zeros(len(y), dtype='float64')
    rng = np.random.RandomState(42)
    x_coords += rng.normal(0.0, 0.08, size=len(x_coords))
    plt.scatter(x_coords, probs, c=y, s=60)
    plt.title(subject)
    plt.show()
Example #5
0
def predict(subject, data_path, model_path, submission_path):
    patient_filenames = [
        filename for filename in os.listdir(model_path)
        if subject in filename and filename.endswith('.pickle')
    ]
    for filename in patient_filenames:
        print(filename)

        d = load_test_data(data_path, subject)
        x, id = d['x'], d['id']

        with open(model_path + '/' + filename, 'rb') as f:
            state_dict = pickle.load(f)

        scalers = state_dict['scalers']
        x, _ = scale_across_time(x, x_test=None, scalers=scalers) if state_dict['params']['scale_time'] \
            else scale_across_features(x, x_test=None, scalers=scalers)

        cnn = ConvNet(state_dict['params'])
        cnn.set_weights(state_dict['weights'])
        test_proba = cnn.get_test_proba(x)

        ans = list(zip(id, test_proba))

        df = DataFrame(data=ans, columns=['clip', 'preictal'])
        csv_name = '.'.join(
            filename.split('.')[:-1]) if '.' in filename else filename
        df.to_csv(submission_path + '/' + csv_name + '.csv',
                  index=False,
                  header=True)
def predict(subject, data_path, model_path, submission_path):
    patient_filenames = [filename for filename in os.listdir(model_path) if
                         subject in filename and filename.endswith('.pickle')]
    for filename in patient_filenames:
        print filename

        d = load_test_data(data_path, subject)
        x, id = d['x'], d['id']

        with open(model_path + '/' + filename, 'rb') as f:
            state_dict = cPickle.load(f)

        scalers = state_dict['scalers']
        x, _ = scale_across_time(x, x_test=None, scalers=scalers) if state_dict['params']['scale_time'] \
            else scale_across_features(x, x_test=None, scalers=scalers)

        cnn = ConvNet(state_dict['params'])
        cnn.set_weights(state_dict['weights'])
        test_proba = cnn.get_test_proba(x)

        ans = zip(id, test_proba)

        df = DataFrame(data=ans, columns=['clip', 'preictal'])
        csv_name = '.'.join(filename.split('.')[:-1]) if '.' in filename else filename
        df.to_csv(submission_path + '/' + csv_name + '.csv', index=False, header=True)
def plot_train_probs(subject, data_path, model_path):
    with open(model_path + "/" + subject + ".pickle", "rb") as f:
        state_dict = cPickle.load(f)
    cnn = ConvNet(state_dict["params"])
    cnn.set_weights(state_dict["weights"])
    scalers = state_dict["scalers"]

    d = load_train_data(data_path, subject)
    x, y = d["x"], d["y"]

    x, _ = (
        scale_across_time(x, x_test=None, scalers=scalers)
        if state_dict["params"]["scale_time"]
        else scale_across_features(x, x_test=None, scalers=scalers)
    )

    cnn.batch_size.set_value(x.shape[0])
    probs = cnn.get_test_proba(x)

    fpr, tpr, threshold = roc_curve(y, probs)
    c = np.sqrt((1 - tpr) ** 2 + fpr ** 2)
    opt_threshold = threshold[np.where(c == np.min(c))[0]]
    print opt_threshold

    x_coords = np.zeros(len(y), dtype="float64")
    rng = np.random.RandomState(42)
    x_coords += rng.normal(0.0, 0.08, size=len(x_coords))
    plt.scatter(x_coords, probs, c=y, s=60)
    plt.title(subject)
    plt.show()
Example #8
0
def train(subject, data_path, model_path, model_params, validation_params):
    d = load_train_data(data_path, subject)
    x, y, filename_to_idx = d['x'], d['y'], d['filename_to_idx']
    x_test = load_test_data(data_path,
                            subject)['x'] if model_params['use_test'] else None

    # --------- add params
    model_params['n_channels'] = x.shape[1]
    model_params['n_fbins'] = x.shape[2]
    model_params['n_timesteps'] = x.shape[3]

    print '============ parameters'
    for key, value in model_params.items():
        print key, ':', value
    print '========================'

    x_train, y_train = None, None
    x_valid, y_valid = None, None

    if model_params['overlap']:
        # no validation if overlap
        filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
        data_grouped_by_hour = load_grouped_train_data(
            data_path, subject, filenames_grouped_by_hour)
        x, y = generate_overlapped_data(data_grouped_by_hour,
                                        overlap_size=model_params['overlap'],
                                        window_size=x.shape[-1],
                                        overlap_interictal=True,
                                        overlap_preictal=True)
        print x.shape

        x, scalers = scale_across_time(x, x_test=None) if model_params['scale_time'] \
            else scale_across_features(x, x_test=None)

        cnn = ConvNet(model_params)
        cnn.train(train_set=(x, y), max_iter=175000)
        state_dict = cnn.get_state()
        state_dict['scalers'] = scalers
        with open(model_path + '/' + subject + '.pickle', 'wb') as f:
            cPickle.dump(state_dict, f, protocol=cPickle.HIGHEST_PROTOCOL)
        return
    else:
        if validation_params['random_split']:
            skf = StratifiedShuffleSplit(y,
                                         n_iter=1,
                                         test_size=0.25,
                                         random_state=0)
            for train_idx, valid_idx in skf:
                x_train, y_train = x[train_idx], y[train_idx]
                x_valid, y_valid = x[valid_idx], y[valid_idx]
        else:
            filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
            d = split_train_valid_filenames(subject, filenames_grouped_by_hour)
            train_filenames, valid_filenames = d['train_filenames'], d[
                'valid_filnames']
            train_idx = [filename_to_idx[i] for i in train_filenames]
            valid_idx = [filename_to_idx[i] for i in valid_filenames]
            x_train, y_train = x[train_idx], y[train_idx]
            x_valid, y_valid = x[valid_idx], y[valid_idx]

    if model_params['scale_time']:
        x_train, scalers_train = scale_across_time(x=x_train, x_test=x_test)
        x_valid, _ = scale_across_time(x=x_valid,
                                       x_test=x_test,
                                       scalers=scalers_train)
    else:
        x_train, scalers_train = scale_across_features(x=x_train,
                                                       x_test=x_test)
        x_valid, _ = scale_across_features(x=x_valid,
                                           x_test=x_test,
                                           scalers=scalers_train)

    del x, x_test

    print '============ dataset'
    print 'train:', x_train.shape
    print 'n_pos:', np.sum(y_train), 'n_neg:', len(y_train) - np.sum(y_train)
    print 'valid:', x_valid.shape
    print 'n_pos:', np.sum(y_valid), 'n_neg:', len(y_valid) - np.sum(y_valid)

    # -------------- validate
    cnn = ConvNet(model_params)
    best_iter = cnn.validate(train_set=(x_train, y_train),
                             valid_set=(x_valid, y_valid),
                             valid_freq=validation_params['valid_freq'],
                             max_iter=validation_params['max_iter'],
                             fname_out=model_path + '/' + subject + '.txt')

    # ---------------- scale
    d = load_train_data(data_path, subject)
    x, y, filename_to_idx = d['x'], d['y'], d['filename_to_idx']
    x_test = load_test_data(data_path,
                            subject)['x'] if model_params['use_test'] else None

    x, scalers = scale_across_time(x=x, x_test=x_test) if model_params['scale_time'] \
        else scale_across_features(x=x, x_test=x_test)
    del x_test

    cnn = ConvNet(model_params)
    cnn.train(train_set=(x, y), max_iter=best_iter)
    state_dict = cnn.get_state()
    state_dict['scalers'] = scalers
    with open(model_path + '/' + subject + '.pickle', 'wb') as f:
        cPickle.dump(state_dict, f, protocol=cPickle.HIGHEST_PROTOCOL)
def train(subject, data_path, model_path, model_params, validation_params):
    d = load_train_data(data_path, subject)
    x, y, filename_to_idx = d['x'], d['y'], d['filename_to_idx']
    x_test = load_test_data(data_path, subject)['x'] if model_params['use_test'] else None

    # --------- add params
    model_params['n_channels'] = x.shape[1]
    model_params['n_fbins'] = x.shape[2]
    model_params['n_timesteps'] = x.shape[3]

    print '============ parameters'
    for key, value in model_params.items():
        print key, ':', value
    print '========================'

    x_train, y_train = None, None
    x_valid, y_valid = None, None

    if model_params['overlap']:
        # no validation if overlap
        filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
        data_grouped_by_hour = load_grouped_train_data(data_path, subject, filenames_grouped_by_hour)
        x, y = generate_overlapped_data(data_grouped_by_hour, overlap_size=model_params['overlap'],
                                        window_size=x.shape[-1],
                                        overlap_interictal=True,
                                        overlap_preictal=True)
        print x.shape

        x, scalers = scale_across_time(x, x_test=None) if model_params['scale_time'] \
            else scale_across_features(x, x_test=None)

        cnn = ConvNet(model_params)
        cnn.train(train_set=(x, y), max_iter=175000)
        state_dict = cnn.get_state()
        state_dict['scalers'] = scalers
        with open(model_path + '/' + subject + '.pickle', 'wb') as f:
            cPickle.dump(state_dict, f, protocol=cPickle.HIGHEST_PROTOCOL)
        return
    else:
        if validation_params['random_split']:
            skf = StratifiedShuffleSplit(y, n_iter=1, test_size=0.25, random_state=0)
            for train_idx, valid_idx in skf:
                x_train, y_train = x[train_idx], y[train_idx]
                x_valid, y_valid = x[valid_idx], y[valid_idx]
        else:
            filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
            d = split_train_valid_filenames(subject, filenames_grouped_by_hour)
            train_filenames, valid_filenames = d['train_filenames'], d['valid_filnames']
            train_idx = [filename_to_idx[i] for i in train_filenames]
            valid_idx = [filename_to_idx[i] for i in valid_filenames]
            x_train, y_train = x[train_idx], y[train_idx]
            x_valid, y_valid = x[valid_idx], y[valid_idx]

    if model_params['scale_time']:
        x_train, scalers_train = scale_across_time(x=x_train, x_test=x_test)
        x_valid, _ = scale_across_time(x=x_valid, x_test=x_test, scalers=scalers_train)
    else:
        x_train, scalers_train = scale_across_features(x=x_train, x_test=x_test)
        x_valid, _ = scale_across_features(x=x_valid, x_test=x_test, scalers=scalers_train)

    del x, x_test

    print '============ dataset'
    print 'train:', x_train.shape
    print 'n_pos:', np.sum(y_train), 'n_neg:', len(y_train) - np.sum(y_train)
    print 'valid:', x_valid.shape
    print 'n_pos:', np.sum(y_valid), 'n_neg:', len(y_valid) - np.sum(y_valid)

    # -------------- validate
    cnn = ConvNet(model_params)
    best_iter = cnn.validate(train_set=(x_train, y_train),
                             valid_set=(x_valid, y_valid),
                             valid_freq=validation_params['valid_freq'],
                             max_iter=validation_params['max_iter'],
                             fname_out=model_path + '/' + subject + '.txt')

    # ---------------- scale
    d = load_train_data(data_path, subject)
    x, y, filename_to_idx = d['x'], d['y'], d['filename_to_idx']
    x_test = load_test_data(data_path, subject)['x'] if model_params['use_test'] else None

    x, scalers = scale_across_time(x=x, x_test=x_test) if model_params['scale_time'] \
        else scale_across_features(x=x, x_test=x_test)
    del x_test

    cnn = ConvNet(model_params)
    cnn.train(train_set=(x, y), max_iter=best_iter)
    state_dict = cnn.get_state()
    state_dict['scalers'] = scalers
    with open(model_path + '/' + subject + '.pickle', 'wb') as f:
        cPickle.dump(state_dict, f, protocol=cPickle.HIGHEST_PROTOCOL)
def train_predict_test_cnn(subject,clf,X,X_test,enhance_size = 0):

	filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
	data_grouped_by_hour = load_grouped_train_data('preprocessed/cnn/', subject, filenames_grouped_by_hour)

	
	X, y = generate_overlapped_data(data_grouped_by_hour, overlap_size=10,
	                                window_size=X.shape[-1],
	                                overlap_interictal=True,
	                                overlap_preictal=True)

	X, scalers = scale_across_time(X, x_test=None)

	X_test, _ = scale_across_time(X_test, x_test=None, scalers=scalers)


	X,xt,y,yt = split_evenly(X,y,test_size = .25)
	#X,xt,y,yt = train_test_split(X,y,test_size = .25)		
	if enhance_size > 0:
		X,y = enhance_data(X,y,enhance_size,cnn=True,even=True)
		xt,yt = enhance_data(xt,yt,enhance_size,cnn=True,even=True)

	print "train size", X.shape
	print "test_size", xt.shape

	#print "done loading"
	clf.fit(X,y,xt,yt)

	#train_loss = np.array([])
	#valid_loss = np.array([])
	

	#print "train,valid size",train_loss.shape,valid_loss.shape
	#print "done fitting"
	preds_proba = clf.predict_proba(X_test)[:,1]

	# unsup_size = int(X_test.shape[0]/5)
	# top_ind = np.argpartition(preds_proba,-unsup_size)[-unsup_size:]
	# bot_ind = preds_proba.argsort()[:unsup_size]
	# x_new_p = X_test[top_ind]
	# x_new_i = X_test[bot_ind]
	# y_p = np.ones(x_new_p.shape[0])
	# y_i = np.zeros(x_new_i.shape[0])

	#print y_p.shape,y_i.shape
	#print x_new_p.shape, x_new_i.shape
	# x_new = np.vstack((x_new_p,x_new_i))
	# y_new = np.append(y_p,y_i)
	# #print x_new.shape,y_new.shape
	# #X,xt,y,yt = split_evenly(x_new,y_new,test_size = .25)	
	# if enhance_size > 0:
	# 	x_new,y_new = enhance_data(x_new,y_new,enhance_size,cnn=True)
		

	# print "train size", X.shape
	# print "test_size", xt.shape

	# #print "done loading"
	# clf2 = CNN(subject)
	# clf2.fit(x_new,y_new,xt,yt)

	# preds_proba = clf2.predict_proba(X_test)[:,1]
	train_loss = np.array([i["train_loss"] for i in clf.convnet.train_history_])
	valid_loss = np.array([i["valid_loss"] for i in clf.convnet.train_history_])
	#preds_proba = set_median_to_half(preds_proba)[:,1]
	preds_scaled = min_max_scale(preds_proba)
	#print preds_proba.shape
	validation_preds = min_max_scale(clf.predict_proba(xt)[:,1])

	return preds_scaled,preds_proba,list(validation_preds),list(yt),train_loss,valid_loss