Пример #1
0
def create_kim_cnn(layer0_input, embedding_size, input_len, config, pref):
    '''
        One layer convolution with different filter-sizes and maxpooling
    '''
    filter_width_list = [
        int(fw) for fw in config[pref + '_filterwidth'].split()
    ]
    print filter_width_list
    num_filters = int(config[pref + '_num_filters'])
    #num_filters /= len(filter_width_list)
    totfilters = 0
    for i, fw in enumerate(filter_width_list):
        num_feature_map = input_len - fw + 1  #39
        conv = Convolutional(image_size=(input_len, embedding_size),
                             filter_size=(fw, embedding_size),
                             num_filters=min(int(config[pref + '_maxfilter']),
                                             num_filters * fw),
                             num_channels=1)
        totfilters += conv.num_filters
        initialize2(conv, num_feature_map)
        conv.name = pref + 'conv_' + str(fw)
        convout = conv.apply(layer0_input)
        pool_layer = MaxPooling(pooling_size=(num_feature_map, 1))
        pool_layer.name = pref + 'pool_' + str(fw)
        act = Rectifier()
        act.name = pref + 'act_' + str(fw)
        outpool = act.apply(pool_layer.apply(convout)).flatten(2)
        if i == 0:
            outpools = outpool
        else:
            outpools = T.concatenate([outpools, outpool], axis=1)
    name_rep_len = totfilters
    return outpools, name_rep_len
Пример #2
0
def create_kim_cnn(layer0_input, embedding_size, input_len, config, pref):
    '''
        One layer convolution with different filter-sizes and maxpooling
    '''
    filter_width_list = [int(fw) for fw in config[pref + '_filterwidth'].split()]
    print filter_width_list
    num_filters = int(config[pref+'_num_filters'])
    #num_filters /= len(filter_width_list)
    totfilters = 0
    for i, fw in enumerate(filter_width_list):
        num_feature_map = input_len - fw + 1 #39
        conv = Convolutional(
            image_size=(input_len, embedding_size),
            filter_size=(fw, embedding_size),
            num_filters=min(int(config[pref + '_maxfilter']), num_filters * fw),
            num_channels=1
        )
        totfilters += conv.num_filters
        initialize2(conv, num_feature_map)
        conv.name = pref + 'conv_' + str(fw)
        convout = conv.apply(layer0_input)
        pool_layer = MaxPooling(
            pooling_size=(num_feature_map,1)
        )
        pool_layer.name = pref + 'pool_' + str(fw)
        act = Rectifier()
        act.name = pref + 'act_' + str(fw)
        outpool = act.apply(pool_layer.apply(convout)).flatten(2)
        if i == 0:
            outpools = outpool
        else:
            outpools = T.concatenate([outpools, outpool], axis=1)
    name_rep_len = totfilters
    return outpools, name_rep_len
Пример #3
0
def create_yy_cnn(numConvLayer, conv_input, embedding_size, input_len, config,
                  pref):
    '''
     CNN with several layers of convolution, each with specific filter size. 
     Maxpooling at the end. 
    '''
    filter_width_list = [
        int(fw) for fw in config[pref + '_filterwidth'].split()
    ]
    base_num_filters = int(config[pref + '_num_filters'])
    assert len(filter_width_list) == numConvLayer
    convs = []
    fmlist = []
    last_fm = input_len
    for i in range(numConvLayer):
        fw = filter_width_list[i]
        num_feature_map = last_fm - fw + 1  #39
        conv = Convolutional(image_size=(last_fm, embedding_size),
                             filter_size=(fw, embedding_size),
                             num_filters=min(int(config[pref + '_maxfilter']),
                                             base_num_filters * fw),
                             num_channels=1)
        fmlist.append(num_feature_map)
        last_fm = num_feature_map
        embedding_size = conv.num_filters
        convs.append(conv)

    initialize(convs)
    for i, conv in enumerate(convs):
        conv.name = pref + '_conv' + str(i)
        conv_input = conv.apply(conv_input)
        conv_input = conv_input.flatten().reshape(
            (conv_input.shape[0], 1, fmlist[i], conv.num_filters))
        lastconv = conv
        lastconv_out = conv_input
    pool_layer = MaxPooling(pooling_size=(last_fm, 1))
    pool_layer.name = pref + '_pool_' + str(fw)
    act = Rectifier()
    act.name = 'act_' + str(fw)
    outpool = act.apply(pool_layer.apply(lastconv_out).flatten(2))
    return outpool, lastconv.num_filters
Пример #4
0
def create_yy_cnn(numConvLayer, conv_input, embedding_size, input_len, config, pref):
    '''
     CNN with several layers of convolution, each with specific filter size. 
     Maxpooling at the end. 
    '''
    filter_width_list = [int(fw) for fw in config[pref + '_filterwidth'].split()]
    base_num_filters = int(config[pref + '_num_filters'])
    assert len(filter_width_list) == numConvLayer
    convs = []; fmlist = []
    last_fm = input_len
    for i in range(numConvLayer):
        fw = filter_width_list[i]
        num_feature_map = last_fm - fw + 1 #39
        conv = Convolutional(
            image_size=(last_fm, embedding_size),
            filter_size=(fw, embedding_size),
            num_filters=min(int(config[pref + '_maxfilter']), base_num_filters * fw),
            num_channels=1
        )
        fmlist.append(num_feature_map)
        last_fm = num_feature_map
        embedding_size = conv.num_filters
        convs.append(conv)

    initialize(convs)
    for i, conv in enumerate(convs):
        conv.name = pref+'_conv' + str(i)
        conv_input = conv.apply(conv_input)
        conv_input = conv_input.flatten().reshape((conv_input.shape[0], 1, fmlist[i], conv.num_filters))
        lastconv = conv 
        lastconv_out = conv_input
    pool_layer = MaxPooling(
        pooling_size=(last_fm,1)
    )
    pool_layer.name = pref+'_pool_' + str(fw)
    act = Rectifier(); act.name = 'act_' + str(fw)
    outpool = act.apply(pool_layer.apply(lastconv_out).flatten(2))
    return outpool, lastconv.num_filters