New Evaluation Paradigm for Lexical Simplification
Abstract
Lexical Simplification (LS) methods use a three-step pipeline: complex word identification, substitute generation, and substitute ranking, each with separate evaluation datasets. We found large language models (LLMs) can simplify sentences directly with a single prompt, bypassing the traditional pipeline. However, existing LS datasets are not suitable for evaluating these LLM-generated simplified sentences, as they focus on providing substitutes for single complex words without identifying all complex words in a sentence. To address this gap, we propose a new annotation method for constructing an all-in-one LS dataset through human-machine collaboration. Automated methods generate a pool of potential substitutes, which human annotators then assess, suggesting additional alternatives as needed. Additionally, we explore LLM-based methods with single prompts, in-context learning, and chain-of-thought techniques. We introduce a multi-LLMs collaboration approach to simulate each step of the LS task. Experimental results demonstrate that LS based on multi-LLMs approaches significantly outperforms existing baselines.
Cite
@article{arxiv.2501.15268,
title = {New Evaluation Paradigm for Lexical Simplification},
author = {Jipeng Qiang and Minjiang Huang and Yi Zhu and Yunhao Yuan and Chaowei Zhang and Xiaoye Ouyang},
journal= {arXiv preprint arXiv:2501.15268},
year = {2025}
}