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Collective Human Opinions in Semantic Textual Similarity

Authors :
Wang, Yuxia
Tao, Shimin
Xie, Ning
Yang, Hao
Baldwin, Timothy
Verspoor, Karin
Source :
TACL Submission batch: 7/2022; Revision batch: 1/2023; Published 2023
Publication Year :
2023

Abstract

Despite the subjective nature of semantic textual similarity (STS) and pervasive disagreements in STS annotation, existing benchmarks have used averaged human ratings as the gold standard. Averaging masks the true distribution of human opinions on examples of low agreement, and prevents models from capturing the semantic vagueness that the individual ratings represent. In this work, we introduce USTS, the first Uncertainty-aware STS dataset with ~15,000 Chinese sentence pairs and 150,000 labels, to study collective human opinions in STS. Analysis reveals that neither a scalar nor a single Gaussian fits a set of observed judgements adequately. We further show that current STS models cannot capture the variance caused by human disagreement on individual instances, but rather reflect the predictive confidence over the aggregate dataset.<br />Comment: 16 pages, 7 figures

Details

Database :
arXiv
Journal :
TACL Submission batch: 7/2022; Revision batch: 1/2023; Published 2023
Publication Type :
Report
Accession number :
edsarx.2308.04114
Document Type :
Working Paper