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New "50%" ARC result and current winners interviewed

Machine Learning Street Talk (MLST)

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Compositionality and Generalization in Machine Learning

This chapter explores the challenges of compositionality in machine learning, particularly in relation to the Algorithmic Reasoning Challenge (ARC). It examines the limitations of domain-specific languages and emphasizes the importance of understanding function interactions for effective problem framing. The discussion highlights distinctions between deep and shallow generalization capabilities of symbolic systems versus machine learning models, touching on the implications for training and enhancing performance in ARC tasks.

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