I'm currently working on building a convolutional neural network (CNN) that will work on financial time series data. The input shape is
(100, 40) - 100 time stamps by 40 features.
The CNN that I'm using uses asymmetric kernel sizes (i.e.
1 x 2 and
4 x 1) and also asymmetric strides (i.e.
1 x 2 for the
1 x 2 layers and
1 x 1 for the
4 x 1 layers).
In order to maintain the height dimension to stay
100, I needed to pad the data. In my research, I noticed that people who use TensorFlow or Keras simply use
padding='same'; but this option is apparently unavailable in PyTorch.
According to some answers in What is the difference between 'SAME' and 'VALID' padding in tf.nn.max_pool of tensorflow?, and also this answer on the PyTorch discussion forum, I can manually calculate how I need to pad my data, and use
torch.nn.ZeroPad2d to solve the problem - since apparently normal
torch.nn.Conv2d layers don't support asymmetric padding (I believe that the total padding I need is 3 in height and 0 in width).
I tried this code:
import torch import torch.nn as nn conv = nn.Conv2d(1, 1, kernel_size=(4, 1)) pad = nn.ZeroPad2d((0, 0, 2, 1)) # Add 2 to top and 1 to bottom. x = torch.randint(low=0, high=9, size=(100, 40)) x = x.unsqueeze(0).unsqueeze(0) y = pad(x) x.shape # (1, 1, 100, 40) y.shape # (1, 1, 103, 40) print(conv(x.float()).shape) print(conv(y.float()).shape) # Output # x -> (1, 1, 97, 40) # y -> (1, 1, 100, 40)
It does work, in the sense that the data shape remains the same. However, is there really no
padding='same' option available? Also, how can we decide which side to pad?