11min chapter

Machine Learning Street Talk (MLST) cover image

New "50%" ARC result and current winners interviewed

Machine Learning Street Talk (MLST)

CHAPTER

Strategies in the ARC Competition

The chapter delves into different teams' strategies in the ARC competition, ranging from fine-tuning language models to achieving high accuracy with extensive prompt engineering. It discusses a neurosymbolic approach involving feature engineering, the importance of sampling, the scaling law for accuracy improvement, challenges with GPT-4.0 for coding tasks, and the implications of recent results on human versus machine reasoning efficiency. The chapter also explores various approaches such as program search, neural-guided program generation, and generating multiple completions for the ARC challenge.

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