The ConceptARC Benchmark: Evaluating Understanding and Generalization in the ARC Domain
Arseny Moskvichev, Victor Vikram Odouard, and Melanie Mitchell

TL;DR
The paper introduces ConceptARC, a new benchmark for evaluating AI's ability to understand and generalize concepts in the ARC domain, highlighting current AI limitations compared to human performance.
Contribution
It presents ConceptARC, a structured benchmark organized around concept groups to systematically assess abstraction and generalization in AI systems.
Findings
Humans outperform AI solvers on ConceptARC
AI systems struggle with abstract and generalized concepts
Benchmark reveals gaps in AI's conceptual understanding
Abstract
The abilities 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, but even when AI systems succeed on such problems, the systems are rarely evaluated in depth to see if they have actually grasped the concepts they are meant to capture. In this paper we describe an in-depth evaluation benchmark for the Abstraction and Reasoning Corpus (ARC), a collection of few-shot abstraction and analogy problems developed by Chollet [2019]. In particular, we describe ConceptARC, a new, publicly available benchmark in the ARC domain that systematically assesses abstraction and generalization abilities on a number of basic spatial and semantic concepts. ConceptARC…
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Taxonomy
TopicsTopic Modeling · Machine Learning in Materials Science · Explainable Artificial Intelligence (XAI)
MethodsAttention Is All You Need · Linear Layer · Adam · Position-Wise Feed-Forward Layer · Residual Connection · Multi-Head Attention · Absolute Position Encodings · Softmax · Layer Normalization · Dropout
