Functionality learning through specification instructions
Test suites assess natural language processing models' performance on specific functionalities: cases of interest involving model robustness, fairness, or particular linguistic capabilities. This paper introduces specification instructions: text descriptions specifying fine-grained task-specific behaviors. For each functionality in a suite, we generate an instruction that describes it. We combine the specification instructions to create specification-augmented prompts, which we feed to language models pre-trained on natural instruction data.We conduct experiments to measure how optimizing for some functionalities may negatively impact functionalities that are not covered by the specification set. Our analyses across four tasks and models of diverse sizes and families show that smaller models struggle to follow specification instructions. However, larger models (\textgreater 3B params.) can benefit from specifications and—-surprisingly—-even generalize certain desirable behaviors across functionalities.
Top- Luz De Araujo, Pedro Henrique
- Roth, Benjamin
Category |
Paper in Conference Proceedings or in Workshop Proceedings (Poster) |
Event Title |
Findings of the Association for Computational Linguistics: EMNLP 2024 |
Divisions |
Data Mining and Machine Learning |
Subjects |
Kuenstliche Intelligenz |
Event Location |
Miami, Florida, USA |
Event Type |
Conference |
Event Dates |
Nov 12th to Nov 16th, 2024 |
Publisher |
Association for Computational Linguistics |
Page Range |
pp. 10955-10990 |
Date |
November 2024 |
Official URL |
https://aclanthology.org/2024.findings-emnlp.642 |
Export |