LGMay 12, 2021

Slower is Better: Revisiting the Forgetting Mechanism in LSTM for Slower Information Decay

arXiv:2105.05944v123 citations
Originality Highly original
AI Analysis

This addresses a bottleneck in recurrent neural networks for tasks requiring long-term memory, offering a novel gating mechanism that can be integrated into other architectures.

The authors tackled the problem of capturing long-range dependencies in LSTMs by proposing a power law forget gate that learns to control information decay, resulting in improved performance on tasks like image classification and language modeling beyond hundreds of elements.

Sequential information contains short- to long-range dependencies; however, learning long-timescale information has been a challenge for recurrent neural networks. Despite improvements in long short-term memory networks (LSTMs), the forgetting mechanism results in the exponential decay of information, limiting their capacity to capture long-timescale information. Here, we propose a power law forget gate, which instead learns to forget information along a slower power law decay function. Specifically, the new gate learns to control the power law decay factor, p, allowing the network to adjust the information decay rate according to task demands. Our experiments show that an LSTM with power law forget gates (pLSTM) can effectively capture long-range dependencies beyond hundreds of elements on image classification, language modeling, and categorization tasks, improving performance over the vanilla LSTM. We also inspected the revised forget gate by varying the initialization of p, setting p to a fixed value, and ablating cells in the pLSTM network. The results show that the information decay can be controlled by the learnable decay factor p, which allows pLSTM to achieve its superior performance. Altogether, we found that LSTM with the proposed forget gate can learn long-term dependencies, outperforming other recurrent networks in multiple domains; such gating mechanism can be integrated into other architectures for improving the learning of long timescale information in recurrent neural networks.

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