2022
DOI: 10.48550/arxiv.2207.02272
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Pretraining on Interactions for Learning Grounded Affordance Representations

Abstract: Lexical semantics and cognitive science point to affordances (i.e. the actions that objects support) as critical for understanding and representing nouns and verbs. However, study of these semantic features has not yet been integrated with the "foundation" models that currently dominate language representation research. We hypothesize that predictive modeling of object state over time will result in representations that encode object affordance information "for free". We train a neural network to predict objec… Show more

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