The ConceptARC dataset is a benchmark for evaluating understanding and generalization in the Abstraction and Reasoning Corpus (ARC) domain. It was developed by Arseny Moskvichev, Victor Vikram Odouard, and Melanie Mitchell. The ability to form and abstract concepts is key to human intelligence, but such abilities remain lacking in state-of-the-art AI systems. There has been substantial research on conceptual abstraction in AI, particularly using idealized domains such as Raven's Progressive Matrices and Bongard problems.

ConceptARC is a new, publicly available benchmark in the ARC domain that systematically assesses abstraction and generalization abilities on many basic spatial and semantic concepts. It differs from the original ARC dataset in that it is specifically organized around "concept groups" -- sets of problems that focus on specific concepts and that vary in complexity and level of abstraction.

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