I have a dataset
50,000 (binary) samples each of
128 features. The class label is also binary either
-1. For instance, a sample would look like this
[1,0,0,0,1,0, .... , 0,1] [-1]. My goal is to classify the samples based on the binary classes( i.e., 1 or -1). I thought to try using Recurrent
LSTM to generate a good model for classification. To do so, I have written the following code using
tr_C, ts_C, tr_r, ts_r = train_test_split(C, r, train_size=.8) batch_size = 200 print('>>> Build STATEFUL model...') model = Sequential() model.add(LSTM(128, batch_input_shape=(batch_size, C.shape, C.shape), return_sequences=False, stateful=True)) model.add(Dense(1, activation='softmax')) print('>>> Training...') model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy']) model.fit(tr_C, tr_r, batch_size=batch_size, epochs=1, shuffle=True, validation_data=(ts_C, ts_r))
However, I am getting bad accuracy, not more than 55%. I tried to change the activation function along with the loss function hoping to improve the accuracy but nothing works. Surprisingly, when I use Multilayer Perceptron, I get very good accuracy around 97%. Thus, I start questioning if LSTM can be used for classification or maybe my code here has something missing or it is wrong. Kindly, I want to know if the code has something missing or wrong to improve the accuracy. Any help or suggestion is appreciated.