Litcius/Paper detail

Transformer-XH: Multi-Evidence Reasoning with eXtra Hop Attention

Chen Zhao, Chenyan Xiong, Corby Rosset, Song Xia, Paul N. Bennett, Saurabh Tiwary

2020International Conference on Learning Representations105 citations

Abstract

Transformers have achieved new heights modeling natural language as a sequence of text tokens. However, in many real world scenarios, textual data inherently exhibits structures beyond a linear sequence such as trees and graphs; many tasks require reasoning with evidence scattered across multiple pieces of texts. This paper presents Transformer-XH, which uses eXtra Hop attention to enable intrinsic modeling of structured texts in a fully data-driven way. Its new attention mechanism naturally “hops” across the connected text sequences in addition to attending over tokens within each sequence. Thus, Transformer-XH better conducts joint multi-evidence reasoning by propagating information between documents and constructing global contextualized representations. On multi-hop question answering, Transformer-XH leads to a simpler multi-hop QA system which outperforms previous state-of-the-art on the HotpotQA FullWiki setting. On FEVER fact verification, applying Transformer-XH provides state-of-the-art accuracy and excels on claims whose verification requires multiple evidence.

Topics & Concepts

TransformerComputer scienceHop (telecommunications)Natural language processingArtificial intelligenceTheoretical computer scienceElectrical engineeringComputer networkEngineeringVoltageTopic ModelingNatural Language Processing TechniquesAdvanced Graph Neural Networks
Transformer-XH: Multi-Evidence Reasoning with eXtra Hop Attention | Litcius