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Non-Stationary Learning of Neural Networks with Automatic Soft Parameter Reset
by
Lyle, Clare
, Titsias, Michalis K
, Teh, Yee Whye
, György, András
, Galashov, Alexandre
, Pascanu, Razvan
, Sahani, Maneesh
in
Neural networks
/ Ornstein-Uhlenbeck process
/ Parameters
/ Supervised learning
2024
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Non-Stationary Learning of Neural Networks with Automatic Soft Parameter Reset
by
Lyle, Clare
, Titsias, Michalis K
, Teh, Yee Whye
, György, András
, Galashov, Alexandre
, Pascanu, Razvan
, Sahani, Maneesh
in
Neural networks
/ Ornstein-Uhlenbeck process
/ Parameters
/ Supervised learning
2024
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Non-Stationary Learning of Neural Networks with Automatic Soft Parameter Reset
Paper
Non-Stationary Learning of Neural Networks with Automatic Soft Parameter Reset
2024
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Overview
Neural networks are traditionally trained under the assumption that data come from a stationary distribution. However, settings which violate this assumption are becoming more popular; examples include supervised learning under distributional shifts, reinforcement learning, continual learning and non-stationary contextual bandits. In this work we introduce a novel learning approach that automatically models and adapts to non-stationarity, via an Ornstein-Uhlenbeck process with an adaptive drift parameter. The adaptive drift tends to draw the parameters towards the initialisation distribution, so the approach can be understood as a form of soft parameter reset. We show empirically that our approach performs well in non-stationary supervised and off-policy reinforcement learning settings.
Publisher
Cornell University Library, arXiv.org
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