I recently built a model for POS tagging. I tried an LSTM model and it works well, but I still want to add a CNN layer which rebuilds the original word's vector. The main problem is the flexible length of the sequence, which can be solved by a masking layer when in RNN, but that's not supported by the CNN. I still zero-pad the origin sequence to the MAXLEN and use it as the input of the CNN because the output of these extra words are still mostly zero, and can be solved by the masking layer.
But it seems very bad with low loss and low acc(0.342,0.298) compared with LSTM(0.478,0.871). What is the main reason for this? How can I solve the flexible length problem?'
input_seq = Input(shape=(None, input_dim), ) #conv，RELU conv_out=Conv1D( filters=200, kernel_size=3, padding='same', activation='relu', use_bias=1,)(input_seq) #zero pad 2 at head pad_out=ZeroPadding1D(padding=(2,0))(conv_out) #max_pool pool_out=MaxPool1D(pool_size=3,strides=1,padding='valid')(pad_out) # masking mask_out = Masking(mask_value=0.0)(pool_out) # LSTM lstm_out = LSTM(units=hidden_unit, return_sequences=True)(mask_out) # drop_out drop_out = Dropout(drop_out_rate)(lstm_out) # softmax output_seq = TimeDistributed(Dense(output_dim, activation="softmax"))(drop_out) # compile model = Model(inputs=input_seq, outputs=output_seq) model.compile(optimizer='rmsprop', loss='categorical_crossentropy', metrics=['accuracy'])
the padding sequences' shape is x(Samples,MAXLEN,200),y(Samples,MAXLEN,42),i use zero-pad for each sequence of x and y.