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Papers/Towards Robust Argumentative Essay Understanding via TIDE: An Interactive Framework with Trial and Debate
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Towards Robust Argumentative Essay Understanding via TIDE: An Interactive Framework with Trial and Debate

May 17, 2026

arXiv
Abstract

Argumentative essays serve as a vital medium for assessing critical thinking and reasoning skills, yet there is limited works on accurately understanding and evaluating such texts via prompt. In this work, we propose TIDE, a novel framework designed to improve criteria-based prompt optimization for argument-related tasks by integrating TrIal and DEbate mechanism. Our method addresses key limitations of criteria-based prompt optimizing by mitigating the influence of noisy training data and enhancing optimization stability. We evaluate TIDE on three core tasks: Automated Essay Scoring, Argument Component Detection, and Argument Relation Identification. Results demonstrate that our framework improves performance across tasks. These findings underscore the potential of combining prompt-based methods for advanced argument understanding.

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Authors
Zheqin Yin, Yupei Ren, Yadong Zhang, Yujiang Lu, Man Lan
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arXiv:2605.17247