I want to feed my data into a LSTM network, but can't find any similar question or tutorial. My dataset is something like:

person 1:
    t1 f1 f2 f3
    t2 f1 f2 f3
     ...
    tn f1 f2 f3
.
.
.

person K:
    t1 f1 f2 f3
    t2 f1 f2 f3
     ...
    tn f1 f2 f3

So i have k person and for each person i have a matrix like input. The first column of each row is incremental time stamp (like a time-line, so t1 < t2) and other columns are features of person in that time.

In mathematical aspect: i have a (number of example,number of time stamp, number of feature) matrix like (52,20,4) which 52 is number of persons, 20 is number of time stamps for a person and 4 is number of features( 1 column is time stamp and 3 are features)

Each person has a class name. I want to classify this persons into two class using LSTM neural network. My question is how to input this type of data into LSTM in a high level library such as Keras?

Edit: My first attempt is to use this as input_shape in keras, but i get 50% accuracy in binary classification! Is the problem in my dataset or input_shape is wrong?!

LSTM(5,input_shape=(20,4))

According to the keras documentation for LSTMs, you're supposed to provide a 3D input shape where the first dimension is the batch size (usually None). So try input_shape = (None, 20, 4). This seems to be a common thing with Keras.

You need to represent each person's data with a feature vector and pass this vector into the classifier (e.g. MLP classifier). The question is how to get the feature vector? There are many ways to get such a feature vector and LSTM is one them.

LSTM needs a 3D vector for its input with the shape of[batch_size x time x feature]. As you mentioned in the question, you can feed data into the model with:

model = Sequential()
model.add(LSTM(5, input_shape=(20, 4))
model.add(Dense(2, activation='sigmoid')

1) I guess t and f values vary widely and are not normalized. As a result, the prediction of LSTM is not impressive.

2) Your dataset is relatively small. To find out whether it is a LSTM problem or Dataset problem overfit the model on training data. If you get the accuracy of 100% on training data then it means your LSTM learned to represent feature vectors very well. Otherwise, it implies you do not design a good model or feed data properly.

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.