Learning Multiple Timescales in Recurrent Neural Networks

Tayfun Alpay, Stefan Heinrich, Stefan Wermter

Publikation: Konference artikel i Proceeding eller bog/rapport kapitelKonferencebidrag i proceedingsForskningpeer review

Abstract

Recurrent Neural Networks (RNNs) are powerful architectures for sequence learning. Recent advances on the vanishing gradient problem have led to improved results and an increased research interest. Among recent proposals are architectural innovations that allow the emergence of multiple timescales during training. This paper explores a number of architectures for sequence generation and prediction tasks with long-term relationships. We compare the Simple Recurrent Network (SRN) and Long Short-Term Memory (LSTM) with the recently proposed Clockwork RNN (CWRNN), Structurally Constrained Recurrent Network (SCRN), and Recurrent Plausibility Network (RPN) with regard to their capabilities of learning multiple timescales. Our results show that partitioning hidden layers under distinct temporal constraints enables the learning of multiple timescales, which contributes to the understanding of the fundamental conditions that allow RNNs to self-organize to accurate temporal abstractions.
OriginalsprogEngelsk
TitelProceedings of the 25th International Conference on Artificial Neural Networks (ICANN2016)
RedaktørerAlessandro E.P. Villa, Paolo Masulli, Javier Antonio Pons Rivero
Antal sider8
Vol/bind9886
UdgivelsesstedBarcelona, ES
ForlagSpringer International Publishing, Switzerland
Publikationsdato1 sep. 2016
Sider132-139
DOI
StatusUdgivet - 1 sep. 2016
Udgivet eksterntJa
NavnLecture Notes in Computer Science

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