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LoFT: Enhancing Faithfulness and Diversity for Table-to-Text Generation via Logic Form Control

Authors :
Zhao, Yilun
Qi, Zhenting
Nan, Linyong
Flores, Lorenzo Jaime Yu
Radev, Dragomir
Publication Year :
2023

Abstract

Logical Table-to-Text (LT2T) generation is tasked with generating logically faithful sentences from tables. There currently exists two challenges in the field: 1) Faithfulness: how to generate sentences that are factually correct given the table content; 2) Diversity: how to generate multiple sentences that offer different perspectives on the table. This work proposes LoFT, which utilizes logic forms as fact verifiers and content planners to control LT2T generation. Experimental results on the LogicNLG dataset demonstrate that LoFT is the first model that addresses unfaithfulness and lack of diversity issues simultaneously. Our code is publicly available at https://github.com/Yale-LILY/LoFT.<br />Comment: Accepted at EACL 2023 as a short paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.02962
Document Type :
Working Paper