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ATOMIC: An Atlas of Machine Commonsense for If-Then Reasoning

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arxiv 1811.00146 v3 pith:O6LFMDAY submitted 2018-10-31 cs.CL

ATOMIC: An Atlas of Machine Commonsense for If-Then Reasoning

classification cs.CL
keywords atomicif-thenknowledgecommonsenseinferentialmodelsatlascompared
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present ATOMIC, an atlas of everyday commonsense reasoning, organized through 877k textual descriptions of inferential knowledge. Compared to existing resources that center around taxonomic knowledge, ATOMIC focuses on inferential knowledge organized as typed if-then relations with variables (e.g., "if X pays Y a compliment, then Y will likely return the compliment"). We propose nine if-then relation types to distinguish causes vs. effects, agents vs. themes, voluntary vs. involuntary events, and actions vs. mental states. By generatively training on the rich inferential knowledge described in ATOMIC, we show that neural models can acquire simple commonsense capabilities and reason about previously unseen events. Experimental results demonstrate that multitask models that incorporate the hierarchical structure of if-then relation types lead to more accurate inference compared to models trained in isolation, as measured by both automatic and human evaluation.

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