Unveiling the Hidden: Movie Genre and User Bias in Spoiler Detection
Unveiling the Hidden: Movie Genre and User Bias in Spoiler Detection
Spoilers in movie reviews are important on platforms like IMDb and Rotten Tomatoes, offering benefits and drawbacks. They can guide some viewers' choices but also affect those who prefer no plot details in advance, making effective spoiler detection essential. Existing spoiler detection methods mainly analyze review text, often overlooking the impact of movie genres and user bias, limiting their effectiveness. To address this, we analyze movie review data, finding genre-specific variations in spoiler rates and identifying that certain users are more likely to post spoilers. Based on these findings, we introduce a new spoiler detection framework called GUSD (The code is available at https://github.com/AI-explorer-123/GUSD) (Genre-aware and User-specific Spoiler Detection), which incorporates genre-specific data and user behavior bias. User bias is calculated through dynamic graph modeling of review history. Additionally, the R2GFormer module combines RetGAT (Retentive Graph Attention Network) for graph information and GenreFormer for genre-specific aggregation. The GMoE (Genre-Aware Mixture of Experts) model further assigns reviews to specialized experts based on genre. Extensive testing on benchmark datasets shows that GUSD achieves state-of-the-art results. This approach advances spoiler detection by addressing genre and user-specific patterns, enhancing user experience on movie review platforms.
Haokai Zhang、Shengtao Zhang、Zijian Cai、Heng Wang、Ruixuan Zhu、Zinan Zeng、Minnan Luo
信息传播、知识传播计算技术、计算机技术
Haokai Zhang,Shengtao Zhang,Zijian Cai,Heng Wang,Ruixuan Zhu,Zinan Zeng,Minnan Luo.Unveiling the Hidden: Movie Genre and User Bias in Spoiler Detection[EB/OL].(2025-04-24)[2025-07-16].https://arxiv.org/abs/2504.17834.点此复制
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