Don't throw the baby out with the bathwater: How and why deep learning for ARC
Jack Cole, Mohamed Osman

TL;DR
This paper demonstrates that deep learning, combined with test-time training techniques, can achieve state-of-the-art performance on the challenging ARC reasoning task, significantly improving generalization to unseen problems.
Contribution
It introduces a novel methodology integrating on-the-fly training and inference techniques, including TTFT and AIRV, to enhance deep learning's reasoning capabilities on ARC.
Findings
Achieved up to 260% accuracy boost with AIRV.
Further improved performance by 300% using TTFT.
Secured first place in the 2023 ARCathon and current best score of 58%.
Abstract
The Abstraction and Reasoning Corpus (ARC-AGI) presents a formidable challenge for AI systems. Despite the typically low performance on ARC, the deep learning paradigm remains the most effective known strategy for generating skillful (state-of-the-art) neural networks (NN) across varied modalities and tasks in vision, language etc. The deep learning paradigm has proven to be able to train these skillful neural networks and learn the abstractions needed in these diverse domains. Our work doubles down on that and continues to leverage this paradigm by incorporating on-the-fly NN training at test time. We demonstrate that fully committing to deep learning's capacity to acquire novel abstractions yields state-of-the-art performance on ARC. Specifically, we treat both the neural network and the optimizer (rather than just a pre-trained network) as integral components of the inference…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education
