2023
DOI: 10.48550/arxiv.2301.10884
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Break It Down: Evidence for Structural Compositionality in Neural Networks

Abstract: Many tasks can be described as compositions over subroutines. Though modern neural networks have achieved impressive performance on both vision and language tasks, we know little about the functions that they implement. One possibility is that neural networks implicitly break down complex tasks into subroutines, implement modular solutions to these subroutines, and compose them into an overall solution to a task -a property we term structural compositionality. Or they may simply learn to match new inputs to me… Show more

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References 29 publications
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