Back to Search Start Over

CEval: A Benchmark for Evaluating Counterfactual Text Generation

Authors :
Nguyen, Van Bach
Schlötterer, Jörg
Seifert, Christin
Source :
INLG 2024
Publication Year :
2024

Abstract

Counterfactual text generation aims to minimally change a text, such that it is classified differently. Judging advancements in method development for counterfactual text generation is hindered by a non-uniform usage of data sets and metrics in related work. We propose CEval, a benchmark for comparing counterfactual text generation methods. CEval unifies counterfactual and text quality metrics, includes common counterfactual datasets with human annotations, standard baselines (MICE, GDBA, CREST) and the open-source language model LLAMA-2. Our experiments found no perfect method for generating counterfactual text. Methods that excel at counterfactual metrics often produce lower-quality text while LLMs with simple prompts generate high-quality text but struggle with counterfactual criteria. By making CEval available as an open-source Python library, we encourage the community to contribute more methods and maintain consistent evaluation in future work.

Details

Database :
arXiv
Journal :
INLG 2024
Publication Type :
Report
Accession number :
edsarx.2404.17475
Document Type :
Working Paper