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Factual Consistency Evaluation for Text Summarization via Counterfactual Estimation

Yuexiang Xie, Fei Sun, Yang Deng, Yaliang Li, Bolin Ding

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Abstract

Despite significant progress has been achieved in text summarization, factual inconsistency in generated summaries still severely limits its practical applications. Among the key factors to ensure factual consistency, a reliable automatic evaluation metric is the first and the most crucial one. However, existing metrics either neglect the intrinsic cause of the factual inconsistency or rely on auxiliary tasks, leading to an unsatisfied correlation with human judgments or increasing the inconvenience of usage in practice. In light of these challenges, we propose a novel metric to evaluate the factual consistency in text summarization via counterfactual estimation, which formulates the causal relationship among the source document, the generated summary, and the language prior. We remove the effect of language prior, which can cause factual inconsistency, from the total causal effect on the generated summary, and provides a simple yet effective way to evaluate consistency without relying on other auxiliary tasks. We conduct a series of experiments on three public abstractive text summarization datasets, and demonstrate the advantages of the proposed metric in both improving the correlation with human judgments and the convenience of usage.

Topics & Concepts

Automatic summarizationConsistency (knowledge bases)Computer scienceMetric (unit)Counterfactual thinkingKey (lock)Information retrievalCode (set theory)Artificial intelligenceNatural language processingMachine learningPsychologyProgramming languageComputer securityOperations managementSocial psychologyEconomicsSet (abstract data type)Topic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
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