I have some trouble understanding LSTM models in TensorFlow.
I use the tflearn as a wrapper, as it does all the initialization and other higher level stuff automatically. For simplicity, let's consider this example program. Until line 42,
net = tflearn.input_data([None, 200]), it's pretty clear what happens. You load a dataset into variables and make it of a standard length (in this case, 200). Both the input variables and also the 2 classes are, in this case, converted to one-hot vectors.
How does the LSTM take the input? Across how many samples does it predict the output?
net = tflearn.embedding(net, input_dim=20000, output_dim=128) represent?
My goal is to replicate the activity recognition dataset in the paper. For example, I would like to input a 4096 vector as input to the LSTM, and the idea is to take 16 of such vectors, and then produce the classification result. I think the code would look like this, but I don't know how the input to the LSTM should be given.
from __future__ import division, print_function, absolute_import import tflearn from tflearn.data_utils import to_categorical, pad_sequences from tflearn.datasets import imdb train, val = something.load_data() trainX, trainY = train #each X sample is a (16,4096) nd float64 valX, valY = val #each Y is a one hot vector of 101 classes. net = tflearn.input_data([None, 16,4096]) net = tflearn.embedding(net, input_dim=4096, output_dim=256) net = tflearn.lstm(net, 256) net = tflearn.dropout(net, 0.5) net = tflearn.lstm(net, 256) net = tflearn.dropout(net, 0.5) net = tflearn.fully_connected(net, 101, activation='softmax') net = tflearn.regression(net, optimizer='adam', loss='categorical_crossentropy') model = tflearn.DNN(net, clip_gradients=0., tensorboard_verbose=3) model.fit(trainX, trainY, validation_set=(testX, testY), show_metric=True, batch_size=128,n_epoch=2,snapshot_epoch=True)