Retrieval-augmented Generation to Improve Math Question-Answering: Trade-offs Between Groundedness and Human Preference

Article Status
Published
Authors/contributors
Title
Retrieval-augmented Generation to Improve Math Question-Answering: Trade-offs Between Groundedness and Human Preference
Abstract
For middle-school math students, interactive question-answering (QA) with tutors is an effective way to learn. The flexibility and emergent capabilities of generative large language models (LLMs) has led to a surge of interest in automating portions of the tutoring process - including interactive QA to support conceptual discussion of mathematical concepts. However, LLM responses to math questions can be incorrect or mismatched to the educational context - such as being misaligned with a school's curriculum. One potential solution is retrieval-augmented generation (RAG), which involves incorporating a vetted external knowledge source in the LLM prompt to increase response quality. In this paper, we designed prompts that retrieve and use content from a high-quality open-source math textbook to generate responses to real student questions. We evaluate the efficacy of this RAG system for middle-school algebra and geometry QA by administering a multi-condition survey, finding that humans prefer responses generated using RAG, but not when responses are too grounded in the textbook content. We argue that while RAG is able to improve response quality, designers of math QA systems must consider trade-offs between generating responses preferred by students and responses closely matched to specific educational resources.
Repository
arXiv
Archive ID
arXiv:2310.03184
Date
2023-10-04
Citation Key
levonian2023
Accessed
01/11/2023, 21:06
Short Title
Retrieval-augmented Generation to Improve Math Question-Answering
Library Catalogue
Extra
arXiv:2310.03184 [cs]
Citation
Levonian, Z., Li, C., Zhu, W., Gade, A., Henkel, O., Postle, M.-E., & Xing, W. (2023). Retrieval-augmented Generation to Improve Math Question-Answering: Trade-offs Between Groundedness and Human Preference (arXiv:2310.03184). arXiv. http://arxiv.org/abs/2310.03184
Powered by Zotero and Kerko.