Nov. 2, 2023, 12:45 a.m. | Allen Institute for AI

Allen Institute for AI www.youtube.com

Abstract: Recombining known primitive concepts into larger novel combinations is a quintessentially human cognitive capability. Whether large neural models in NLP can acquire this ability while learning from data is an open question. In this paper, we investigate this problem from the perspective of formal languages. We use deterministic finite-state transducers to make an unbounded number of datasets with controllable properties governing compositionality. By randomly sampling over many transducers, we explore which of their properties contribute to learnability of a …

abstract benchmarking capability cognitive concepts data human languages nlp novel paper perspective state

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