通过 Twitter 上的社区进行基于 SHAP 的争议分析

Samy Benslimane, Thomas Papastergiou, Jérôme Azé, Sandra Bringay, Maximilien Servajean, Caroline Mollevi
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引用次数: 0

摘要

我们通过 SHAP(SHapley Additive exPlanations)方法探索争议的可解释性,旨在对推文不同文本特征对争议检测的贡献进行公平评估。我们从社区的角度对 Twitter 上的话题讨论进行分析,研究文本在将推文准确分类到各自社区中的作用。为此,我们引入了基于 SHAP 的管道,旨在量化有影响力的文本特征对三种推文分类器预测的影响。仅文本内容就能提供有趣的争议检测准确率。它可以包含争议检测的预测特征。例如,负面内涵、贬义倾向和正面修饰形容词往往会影响争议模型的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A SHAP-based controversy analysis through communities on Twitter

A SHAP-based controversy analysis through communities on Twitter

Controversy encompasses content that draws diverse perspectives, along with positive and negative feedback on a specific event, resulting in the formation of distinct user communities. we explore the explainability of controversy through the lens of SHAP (SHapley Additive exPlanations) method, aiming to provide a fair assessment of the individual contributions of different text features of tweets to controversy detection. We conduct an analysis of topic discussions on Twitter from a community perspective, investigating the role of text in accurately classifying tweets into their respective communities. To achieve this, we introduce a SHAP-based pipeline designed to quantify the influence of impactful text features on the predictions of three tweet classifiers. Text content alone offers interesting controversy detection accuracy. It can contain predictive features for controversy detection. For instance, negative connotations, pejorative tendencies and positive qualifying adjectives tend to impact the controversy model detection.

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