First of all, I have just stepped in deeplearing. And I want to use LSTM (in python, using Keras libraries) to solve the prediction problem.
I have read the dataset (25 observations) from csv and splited it into 2 parts called: train set (67% of dataset, 17 observations) and test set (33% of dataset, 8 observations).
I have changed train set into 2 set:
- trainX: [[obs, 0] [obs, 0] ... [obs[n-1], 0]]
- trainY: [[obs, 0] [obs, 0] ... [obs[n], 0]]
(with n is the size of train set (17 observations))
(i have done the same thing with test set)
So, I have 4 set named: trainX, trainY, testX, textY
Each set has the shape like [x[i], 0]
I have read some "Google" document that i need to reshape it, so i do something like this:
trainX = numpy.reshape(trainX, (trainX.shape, 1, trainX.shape)) testX = numpy.reshape(testX, (testX.shape, 1, testX.shape))
After 2 lines code, my trainX will be like [value[i], time_steps=1, value[i + 1]]
(time_steps = look_back = 1)
Then i print my shape to check how it look:
My shape is:
(15, 1, 2)
At last, before I make predictions, I need to fit the model so I do this:
model = Sequential() model.add(LSTM(4, input_shape=(1, look_back))) model.add(Dense(1)) model.compile(loss='mean_squared_error', optimizer='adam') model.fit(trainX, trainY, epochs=100, batch_size=1, verbose=2)
(Actually, I don't know how to fit the model rightly, so it tell me the error).
It notice the error:
ValueError: Error when checking input: expected lstm_0_input to have shape (None, 1, 1) but got array with shape (15, 1, 2)
Could you tell me the way how i can fit the model with my data sets?
Thank you very much.