Explaining Sentiments: Improving Explainability in Sentiment Analysis Using Local Interpretable Model-Agnostic Explanations and Counterfactual Explanations
  • Wang, Xin
  • Lyu, Jianhui
  • Peter, J. Dinesh
  • Kim, Byung-Gyu
  • Parameshachari, Bidare Divakarachari
  • 외 2명
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초록

Sentiment analysis of social media platforms is crucial for extracting actionable insights from unstructured textual data. However, modern sentiment analysis models using deep learning lack explainability, acting as black box and limiting trust. This study focuses on improving the explainability of sentiment analysis models of social media platforms by leveraging explainable artificial intelligence (XAI). We propose a novel explainable sentiment analysis (XSA) framework incorporating intrinsic and posthoc XAI methods, i.e., local interpretable model-agnostic explanations (LIME) and counterfactual explanations. Specifically, to solve the problem of lack of local fidelity and stability in interpretations caused by the LIME random perturbation sampling method, a new model-independent interpretation method is proposed, which uses the isometric mapping virtual sample generation method based on manifold learning instead of LIMEs random perturbation sampling method to generate samples. Additionally, a generative link tree is presented to create counterfactual explanations that maintain strong data fidelity, which constructs counterfactual narratives by leveraging examples from the training data, employing a divide-and-conquer strategy combined with local greedy. Experiments conducted on social media datasets from Twitter, YouTube comments, Yelp, and Amazon demonstrate XSAs ability to provide local aspect-level explanations while maintaining sentiment analysis performance. Analyses reveal improved model explainability and enhanced user trust, demonstrating XAIs potential in sentiment analysis of social media platforms. The proposed XSA framework provides a valuable direction for developing transparent and trust-worthy sentiment analysis models for social media platforms.

키워드

explainabilityExplainable artificial intelligence (XAI)local interpretable model-agnostic explanations (LIME)sentiment analysis (SA)
제목
Explaining Sentiments: Improving Explainability in Sentiment Analysis Using Local Interpretable Model-Agnostic Explanations and Counterfactual Explanations
저자
Wang, XinLyu, JianhuiPeter, J. DineshKim, Byung-GyuParameshachari, Bidare DivakarachariLi, KeqinWei, Wei
DOI
10.1109/TCSS.2025.3531718
발행일
2025-06
유형
Article
저널명
IEEE Transactions on Computational Social Systems
12
3
페이지
1390 ~ 1403