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Polarity is all you need to learn and transfer faster

Setting weight polarities before training can enhance statistical and computational efficiency in neural networks, reducing the time and data required for learning.

Year
2023
Venue
arXiv 2023
Authors
5
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arxiv.org/abs/2303.17589v2ARXIV-DEFAULT
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Abstract

Natural intelligences (NIs) thrive in a dynamic world - they learn quickly, sometimes with only a few samples. In contrast, artificial intelligences (AIs) typically learn with a prohibitive number of training samples and computational power. What design principle difference between NI and AI could contribute to such a discrepancy? Here, we investigate the role of weight polarity: development processes initialize NIs with advantageous polarity configurations; as NIs grow and learn, synapse magnitudes update, yet polarities are largely kept unchanged. We demonstrate with simulation and image classification tasks that if weight polarities are adequately set a priori, then networks learn with less time and data. We also explicitly illustrate situations in which a priori setting the weight polarities is disadvantageous for networks. Our work illustrates the value of weight polarities from the perspective of statistical and computational efficiency during learning.

Authors

5