Kavli Affiliate: Wei Gao
| First 5 Authors: Fengzhu Zeng, Wei Gao, , ,
| Summary:
Justification is an explanation that supports the veracity assigned to a
claim in fact-checking. However, the task of justification generation is
previously oversimplified as summarization of fact-check article authored by
fact-checkers. Therefore, we propose a realistic approach to generate
justification based on retrieved evidence. We present a new benchmark dataset
called ExClaim for underline{Ex}plainable fact-checking of real-world
underline{Claim}s, and introduce JustiLM, a novel few-shot
underline{Justi}fication generation based on retrieval-augmented
underline{L}anguage underline{M}odel by using fact-check articles as
auxiliary resource during training only. Experiments show that JustiLM achieves
promising performance in justification generation compared to strong baselines,
and can also enhance veracity classification with a straightforward extension.
| Search Query: ArXiv Query: search_query=au:”Wei Gao”&id_list=&start=0&max_results=3