CURI: A Benchmark for Productive Concept Learning Under UncertaintyDownload PDF

28 Sept 2020 (modified: 05 May 2023)ICLR 2021 Conference Blind SubmissionReaders: Everyone
Keywords: compositional learning, meta-learning, systematicity, reasoning
Abstract: Humans can learn and reason under substantial uncertainty in a space of infinitely many concepts, including structured relational concepts (“a scene with objects that have the same color”) and ad-hoc categories defined through goals (“objects that could fall on one’s head”). In contrast, standard classification benchmarks: 1) consider only a fixed set of category labels, 2) do not evaluate compositional concept learning and 3) do not explicitly capture a notion of reasoning under uncertainty. We introduce a new few-shot, meta-learning benchmark, Compositional Reasoning Under Uncertainty (CURI) to bridge this gap. CURI evaluates different aspects of productive and systematic generalization, including abstract understandings of disentangling, productive generalization, learning boolean operations, variable binding, etc. Importantly, it also defines a model-independent “compositionality gap” to evaluate difficulty of generalizing out-of-distribution along each of these axes. Extensive evaluations across a range of modeling choices spanning different modalities (image, schemas, and sounds), splits, privileged auxiliary concept information, and choices of negatives reveal substantial scope for modeling advances on the proposed task. All code and datasets will be available online.
One-sentence Summary: A novel benchmark that tests compositional reasoning about concepts under uncertainty
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