Title
Multi-Hop Fact Checking of Political Claims.
Abstract
Recently, novel multi-hop models and datasets have been introduced to achieve more complex natural language reasoning with neural networks. One notable task that requires multi-hop reasoning is fact checking, where a chain of connected evidence pieces leads to the final verdict of a claim. However, existing datasets do not provide annotations for the gold evidence pieces, which is a critical aspect for improving the explainability of fact checking systems. The only exception is the FEVER dataset, which is artificially constructed based on Wikipedia and does not use naturally occurring political claims and evidence pages, which is more challenging. Most claims in FEVER only have one evidence sentence associated with them and require no reasoning to make label predictions -- the small number of instances with two evidence sentences only require simple reasoning. In this paper, we study how to perform more complex claim verification on naturally occurring claims with multiple hops over evidence chunks. We first construct a small annotated dataset, PolitiHop, of reasoning chains for claim verification. We then compare the dataset to other existing multi-hop datasets and study how to transfer knowledge from more extensive in- and out-of-domain resources to PolitiHop. We find that the task is complex, and achieve the best performance using an architecture that specifically models reasoning over evidence chains in combination with in-domain transfer learning.
Year
DOI
Venue
2021
10.24963/ijcai.2021/536
IJCAI
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Wojciech Ostrowski100.34
Arnav Arora201.35
Pepa Gencheva3298.87
Isabelle Augenstein427829.99