2022
DOI: 10.48550/arxiv.2203.11815
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Clustering units in neural networks: upstream vs downstream information

Abstract: It has been hypothesized that some form of "modular" structure in artificial neural networks should be useful for learning, compositionality, and generalization. However, defining and quantifying modularity remains an open problem. We cast the problem of detecting functional modules into the problem of detecting clusters of similar-functioning units. This begs the question of what makes two units functionally similar. For this, we consider two broad families of methods: those that define similarity based on ho… Show more

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