Handling irregularly sampled signals with gated temporal convolutional networks
Date
2022-07-06Source Title
Signal, Image and Video Processing
Print ISSN
1863-1703
Language
English
Type
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Abstract
We investigate the sequential modeling problem and introduce a novel gating mechanism into the temporal convolutional network architectures. In particular, we introduce the gated temporal convolutional network architecture with elaborately tailored gating mechanisms. In our implementation, we alter the way in which the gradients flow and avoid the vanishing or exploding gradient and the dead ReLU problems. The proposed GTCN architecture is able to model the irregularly sampled sequences as well. In our experiments, we show that the basic GTCN architecture is superior to the generic TCN architectures in various benchmark tasks requiring the modeling of long-term dependencies and irregular sampling intervals. Moreover, we achieve the state-of-the-art results on the permuted sequential MNIST and the sequential CIFAR10 benchmarks with the basic structure.
Keywords
Irregular samplingSequential learning
Temporal convolutional networks
Time series classification