Fact Checking with Insufficient Evidence

Author:

Atanasova Pepa1,Simonsen Jakob Grue2,Lioma Christina3,Augenstein Isabelle4

Affiliation:

1. Department of Computer Science, University of Copenhagen, Denmark. pepa@di.ku.dk

2. Department of Computer Science, University of Copenhagen, Denmark. simonsen@di.ku.dk

3. Department of Computer Science, University of Copenhagen, Denmark. c.lioma@di.ku.dk

4. Department of Computer Science, University of Copenhagen, Denmark. augenstein@di.ku.dk

Abstract

AbstractAutomating the fact checking (FC) process relies on information obtained from external sources. In this work, we posit that it is crucial for FC models to make veracity predictions only when there is sufficient evidence and otherwise indicate when it is not enough. To this end, we are the first to study what information FC models consider sufficient by introducing a novel task and advancing it with three main contributions. First, we conduct an in-depth empirical analysis of the task with a new fluency-preserving method for omitting information from the evidence at the constituent and sentence level. We identify when models consider the remaining evidence (in)sufficient for FC, based on three trained models with different Transformer architectures and three FC datasets. Second, we ask annotators whether the omitted evidence was important for FC, resulting in a novel diagnostic dataset, SufficientFacts1, for FC with omitted evidence. We find that models are least successful in detecting missing evidence when adverbial modifiers are omitted (21% accuracy), whereas it is easiest for omitted date modifiers (63% accuracy). Finally, we propose a novel data augmentation strategy for contrastive self-learning of missing evidence by employing the proposed omission method combined with tri-training. It improves performance for Evidence Sufficiency Prediction by up to 17.8 F1 score, which in turn improves FC performance by up to 2.6 F1 score.

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

Reference45 articles.

1. Generating label cohesive and well-formed adversarial claims;Atanasova,2020

2. Isabelle Augenstein . 2021. Towards Explainable Fact Checking. Dr. Scient. thesis, University of Copenhagen, Faculty of Science.

3. English news text treebank: Penn treebank revised;Bies,2015

4. Introducing English Grammar

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