Causal Inference of Script Knowledge
Computation and Language
2020-04-03 v1
Abstract
When does a sequence of events define an everyday scenario and how can this knowledge be induced from text? Prior works in inducing such scripts have relied on, in one form or another, measures of correlation between instances of events in a corpus. We argue from both a conceptual and practical sense that a purely correlation-based approach is insufficient, and instead propose an approach to script induction based on the causal effect between events, formally defined via interventions. Through both human and automatic evaluations, we show that the output of our method based on causal effects better matches the intuition of what a script represents
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Cite
@article{arxiv.2004.01174,
title = {Causal Inference of Script Knowledge},
author = {Noah Weber and Rachel Rudinger and Benjamin Van Durme},
journal= {arXiv preprint arXiv:2004.01174},
year = {2020}
}
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