I'm using CNNs in Keras for an NLP task and instead of max pooling, I'm trying to achieve max over time pooling.

Any ideas/hacks on how to achieve this?

What I mean by max over time pooling is to pool the highest value, no matter where they are in the vector


Assuming that your data shape is (batch_size, seq_len, features) you may apply:

seq_model = Reshape((seq_len * features, 1))(seq_model)
seq_model = GlobalMaxPooling1D()(seq_model)
  • Exactly what I needed, thanks – bluesummers Jan 31 '17 at 19:03
  • @bluesummers Does it really answer on your question? Look at model.summary(). You will receive ONE max value, not 'the highest n values'. – Alexey Golyshev Feb 1 '17 at 6:36
  • @AlexeyGolyshev, you won't receive max value, the input is in the shape of (samples, steps, features), and output is (samples, features) - this is not restricted to 1 max value – bluesummers Feb 1 '17 at 7:24
  • @bluesummers Your question is interesting and I'm trying to understand. Look at this code: model=Sequential([Embedding(500,10,input_length=5),Reshape((5*10,1)),GlobalMaxPooling1D()]);model.summary() Output shape at the end = (None, 1). None is equivalent of batch_size or samples. Features = 1. Where I'm wrong? – Alexey Golyshev Feb 1 '17 at 8:01
  • You are not wrong, I was in my writing, what I meant is that you won't necessarily get 1 max value, you get 1 max tensor. So you can get a vector of length n as output from the GlobalMaxPooling1D - that was the n I referred to - I will edit the question – bluesummers Feb 1 '17 at 8:21

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