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View all- Ding LShen DWang CWang TZhang LZhang YLarson K(2024)DGRProceedings of the Thirty-Third International Joint Conference on Artificial Intelligence10.24963/ijcai.2024/224(2027-2035)Online publication date: 3-Aug-2024
Fairness-aware recommendation alleviates discrimination issues to build trustworthy recommendation systems. Explaining the causes of unfair recommendations is critical, as it promotes fairness diagnostics, and thus secures users’ trust in recommendation ...
Recent several years have witnessed the rapid explosion of artificial intelligence applied in various domains with the surpassing human-level performance. Despite the success, these models’ underlying mechanisms remain a mystery, as their ...
Providing explanations for recommendation decisions is crucial for enhancing user trust and satisfaction in recommender systems. However, existing generative methods often produce generic, repetitive explanation texts that fail to reflect the true reasons ...
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