Abstract
NLP models struggle with generalization due to sampling and annotator bias. This paper focuses on a different kind of bias that has received very little attention: guideline bias, i.e., the bias introduced by how our annotator guidelines are formulated. We examine two recently introduced dialogue datasets, CCPE-M and Taskmaster-1, both collected by trained assistants in a Wizard-of-Oz set-up. For CCPE-M, we show how a simple lexical bias for the word like in the guidelines biases the data collection. This bias, in effect, leads to poor performance on data without this bias: a preference elicitation architecture based on BERT suffers a 5.3% absolute drop in performance, when like is replaced with a synonymous phrase, and a 13.2% drop in performance when evaluated on out-of-sample data. For Taskmaster-1, we show how the order in which instructions are presented, biases the data collection.
Originalsprog | Engelsk |
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Titel | BPPF 2021 - 1st Workshop on Benchmarking : Past, Present and Future, Proceedings |
Redaktører | Kenneth Church, Mark Liberman, Valia Kordoni |
Forlag | Association for Computational Linguistics |
Publikationsdato | 2021 |
Sider | 8-14 |
ISBN (Elektronisk) | 9781954085589 |
DOI | |
Status | Udgivet - 2021 |
Begivenhed | 1st Workshop on Benchmarking: Past, Present and Future, BPPF 2021 - Virtual, Bangkok, Thailand Varighed: 5 aug. 2021 → 6 aug. 2021 |
Konference
Konference | 1st Workshop on Benchmarking: Past, Present and Future, BPPF 2021 |
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Land/Område | Thailand |
By | Virtual, Bangkok |
Periode | 05/08/2021 → 06/08/2021 |
Bibliografisk note
Publisher Copyright:©2021 Association for Computational Linguistics