I am trying to train a CNN for sentence classification using TFLearn.
- I am not using an embedding layer
- A Word2Vec model is used for embedding words with a vector size of 100
- Each sentence is padded so that all sentences are of length 30
- There are 10 classes in my data
So each sentence is of the size
I want to use TFLearn to design a CNN for classifying these sentences, to test this out I wrote the following code
net = tflearn.input_data(shape=[None, 30]) net = tflearn.conv_1d(net, 128, 5, padding="valid", activation='relu') net = tflearn.max_pool_1d(net, 2) net = tflearn.dropout(net, 0.5) net = tflearn.fully_connected(net, 10, activation='softmax') net = tflearn.regression(net, optimizer='adam', learning_rate=0.001, loss='categorical_crossentropy')
When I ran this, I got the following error
Incoming Tensor shape must be 3-D
I solved this by changing
net = tflearn.input_data(shape=[None, 30])
net = tflearn.input_data(shape=[None, 30, 100])
because each word is represented by a vector of size 100.
When training this with a batch size of 16 and an epoch of 1000, the loss was around 1.5 and accuracy was 65%-71% and it never seemed to improve over time no matter what.
- 100 sentences are used for training this model.
So my question is, is the model not converging because the input shape is somehow wrong, or is it not converging because my training data is not good enough, or should I train it for longer?