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Recasting Self-Attention with Holographic Reduced Representations

A Holographic Reduced Representations (HRR)-based transformer (Hrrformer) enables efficient self-attention for very long sequences, reducing memory and compute costs and achieving state-of-the-art results on malware detection.

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Year
2023
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arXiv 2023
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5
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arxiv.org/abs/2305.19534ARXIV-DEFAULT
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Abstract

In recent years, self-attention has become the dominant paradigm for sequence modeling in a variety of domains. However, in domains with very long sequence lengths the O(T^2) memory and O(T^2 H) compute costs can make using transformers infeasible. Motivated by problems in malware detection, where sequence lengths of T \geq 100,000 are a roadblock to deep learning, we re-cast self-attention using the neuro-symbolic approach of Holographic Reduced Representations (HRR). In doing so we perform the same high-level strategy of the standard self-attention: a set of queries matching against a set of keys, and returning a weighted response of the values for each key. Implemented as a ``Hrrformer'' we obtain several benefits including O(T H \log H) time complexity, O(T H) space complexity, and convergence in 10\times fewer epochs. Nevertheless, the Hrrformer achieves near state-of-the-art accuracy on LRA benchmarks and we are able to learn with just a single layer. Combined, these benefits make our Hrrformer the first viable Transformer for such long malware classification sequences and up to 280\times faster to train on the Long Range Arena benchmark. Code is available at https://github.com/NeuromorphicComputationResearchProgram/Hrrformer

Authors

5