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Rome was built in 1776: A Case Study on Factual Correctness in Knowledge-Grounded Response Generation

Authors :
Santhanam, Sashank
Hedayatnia, Behnam
Gella, Spandana
Padmakumar, Aishwarya
Kim, Seokhwan
Liu, Yang
Hakkani-Tur, Dilek
Publication Year :
2021

Abstract

Recently neural response generation models have leveraged large pre-trained transformer models and knowledge snippets to generate relevant and informative responses. However, this does not guarantee that generated responses are factually correct. In this paper, we examine factual correctness in knowledge-grounded neural response generation models. We present a human annotation setup to identify three different response types: responses that are factually consistent with respect to the input knowledge, responses that contain hallucinated knowledge, and non-verifiable chitchat style responses. We use this setup to annotate responses generated using different stateof-the-art models, knowledge snippets, and decoding strategies. In addition, to facilitate the development of a factual consistency detector, we automatically create a new corpus called Conv-FEVER that is adapted from the Wizard of Wikipedia dataset and includes factually consistent and inconsistent responses. We demonstrate the benefit of our Conv-FEVER dataset by showing that the models trained on this data perform reasonably well to detect factually inconsistent responses with respect to the provided knowledge through evaluation on our human annotated data. We will release the Conv-FEVER dataset and the human annotated responses.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.05456
Document Type :
Working Paper