How to input a classification time series data into LSTM

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