@inproceedings{bai-etal-2025-maple,
title = "{MAPLE}: Multi-Agent Adaptive Planning with Long-Term Memory for Table Reasoning",
author = "Bai, Ye and
Wang, Minghan and
Vu, Thuy-Trang",
editor = "Kummerfeld, Jonathan K. and
Joshi, Aditya and
Dras, Mark",
booktitle = "Proceedings of The 23rd Annual Workshop of the Australasian Language Technology Association",
month = nov,
year = "2025",
address = "Sydney, Australia",
publisher = "Association for Computational Linguistics",
url = "https://preview.aclanthology.org/ingest-alta/2025.alta-main.10/",
pages = "132--158",
ISBN = "1834-7037",
abstract = "Information extraction from the scientific literature is a long-standing technique for transforming unstructured knowledge hidden in text into structured data, which can then be used for further analytics and decision-making in downstream tasks. A large body of scientific literature discusses Trust in AI, where factors contributing to human trust in artificial intelligence (AI) applications and technology are studied. It explores questions such as why people may or may not trust a self-driving car, and what factors influence such trust. The relationships of these factors with human trust in AI applications are complex. We explore this space through the lens of information extraction. That is, we investigate how to extract these factors from the literature that studies them. The outcome could inform technology developers to improve the acceptance rate of their products. Our results indicate that (1) while NER is largely considered a solved problem in many domains, it is far from solved in extracting factors of human trust in AI from the relevant scientific literature; and, (2) supervised learning is more effective for this task than prompt-based LLMs."
}Markdown (Informal)
[MAPLE: Multi-Agent Adaptive Planning with Long-Term Memory for Table Reasoning](https://preview.aclanthology.org/ingest-alta/2025.alta-main.10/) (Bai et al., ALTA 2025)
ACL