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PIGLeT: Language Grounding Through Neuro-Symbolic Interaction in a 3D World

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arxiv 2106.00188 v2 pith:KX6JAJ6D submitted 2021-06-01 cs.CL cs.AI

PIGLeT: Language Grounding Through Neuro-Symbolic Interaction in a 3D World

classification cs.CL cs.AI
keywords modellanguagepigletwhatdynamicslearnsphysicalthen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose PIGLeT: a model that learns physical commonsense knowledge through interaction, and then uses this knowledge to ground language. We factorize PIGLeT into a physical dynamics model, and a separate language model. Our dynamics model learns not just what objects are but also what they do: glass cups break when thrown, plastic ones don't. We then use it as the interface to our language model, giving us a unified model of linguistic form and grounded meaning. PIGLeT can read a sentence, simulate neurally what might happen next, and then communicate that result through a literal symbolic representation, or natural language. Experimental results show that our model effectively learns world dynamics, along with how to communicate them. It is able to correctly forecast "what happens next" given an English sentence over 80% of the time, outperforming a 100x larger, text-to-text approach by over 10%. Likewise, its natural language summaries of physical interactions are also judged by humans as more accurate than LM alternatives. We present comprehensive analysis showing room for future work.

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