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Coalescing Global and Local Information for Procedural Text Understanding

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arxiv 2208.12848 v1 pith:RQYLDBRB submitted 2022-08-26 cs.CL

Coalescing Global and Local Information for Procedural Text Understanding

classification cs.CL
keywords globallocalmodelproceduralreasoningunderstandingcgliinput
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Procedural text understanding is a challenging language reasoning task that requires models to track entity states across the development of a narrative. A complete procedural understanding solution should combine three core aspects: local and global views of the inputs, and global view of outputs. Prior methods considered a subset of these aspects, resulting in either low precision or low recall. In this paper, we propose Coalescing Global and Local Information (CGLI), a new model that builds entity- and timestep-aware input representations (local input) considering the whole context (global input), and we jointly model the entity states with a structured prediction objective (global output). Thus, CGLI simultaneously optimizes for both precision and recall. We extend CGLI with additional output layers and integrate it into a story reasoning framework. Extensive experiments on a popular procedural text understanding dataset show that our model achieves state-of-the-art results; experiments on a story reasoning benchmark show the positive impact of our model on downstream reasoning.

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