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Comply: Learning Sentences with Complex Weights inspired by Fruit Fly Olfaction
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本文介绍了一种名为Comply的生物启发神经网络模型,该模型通过引入位置信息,使单层神经网络能够学习序列表示,在词嵌入学习任务中表现优异,效率高,且参数少。

arXiv:2502.01706v3 Announce Type: replace-cross Abstract: Biologically inspired neural networks offer alternative avenues to model data distributions. FlyVec is a recent example that draws inspiration from the fruit fly's olfactory circuit to tackle the task of learning word embeddings. Surprisingly, this model performs competitively even against deep learning approaches specifically designed to encode text, and it does so with the highest degree of computational efficiency. We pose the question of whether this performance can be improved further. For this, we introduce Comply. By incorporating positional information through complex weights, we enable a single-layer neural network to learn sequence representations. Our experiments show that Comply not only supersedes FlyVec but also performs on par with significantly larger state-of-the-art models. We achieve this without additional parameters. Comply yields sparse contextual representations of sentences that can be interpreted explicitly from the neuron weights.

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Comply模型 词嵌入 神经网络 生物启发 高效学习
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