Publication: On measuring social biases in prompt-based multi-task learning
Program
KU-Authors
KU Authors
Co-Authors
Akyürek, Afra Feyza
Paik, Sejin
Koçyiğit, Muhammed Yusuf
Akbıyık, Seda
Wijaya, Derry
Advisor
Publication Date
2022
Language
English
Type
Conference proceeding
Journal Title
Journal ISSN
Volume Title
Abstract
Large language models trained on a mixture of NLP tasks that are converted into a textto- text format using prompts, can generalize into novel forms of language and handle novel tasks. A large body of work within prompt engineering attempts to understand the effects of input forms and prompts in achieving superior performance. We consider an alternative measure and inquire whether the way in which an input is encoded affects social biases promoted in outputs. In this paper, we study T0, a large-scale multi-task text-to-text language model trained using prompt-based learning. We consider two different forms of semantically equivalent inputs: question-answer format and premise-hypothesis format. We use an existing bias benchmark for the former BBQ (Parrish et al., 2021) and create the first bias benchmark in natural language inference BBNLI with hand-written hypotheses while also converting each benchmark into the other form. The results on two benchmarks suggest that given two different formulations of essentially the same input, T0 conspicuously acts more biased in question answering form, which is seen during training, compared to premisehypothesis form which is unlike its training examples.
Description
Source:
Findings of the Association for Computational Linguistics: NAACL 2022 - Findings
Publisher:
Association for Computational Linguistics (ACL)
Keywords:
Subject
Computer Science, Artificial intelligence