Evaluating Character Understanding of Large Language Models via Character Profiling from Fictional Works

An overview of character profiling with LLMs and the two evaluation tasks we proposed, including factual consistency examination and motivation recognition.

Abstract

Large language models (LLMs) have demonstrated impressive performance and spurred numerous AI applications, in which role-playing agents (RPAs) are particularly popular, especially for fictional characters. The prerequisite for these RPAs lies in the capability of LLMs to understand characters from fictional works. Previous efforts have evaluated this capability via basic classification tasks or characteristic imitation, failing to capture the nuanced character understanding with LLMs. In this paper, we propose evaluating LLMs’ character understanding capability via the character profiling task, i.e., summarizing character profiles from corresponding materials, a widely adopted yet understudied practice for RPA development. Specifically, we construct the CroSS dataset from literature experts and assess the generated profiles by comparing ground truth references and their applicability in downstream tasks. Our experiments, which cover various summarization methods and LLMs, have yielded promising results. These results strongly validate the character understanding capability of LLMs.

Type
Publication
In The 2024 Conference on Empirical Methods in Natural Language Processing (EMNLP 2024)
Jiangjie Chen
Jiangjie Chen
Researcher

His research interests mainly include large models and their reasoning and planning abilities.