Analyzing the Effectiveness of Collaborative Filtering and Content-Based Filtering Methods in Anime Recommendation Systems

Helmy Dianty Putri, Muhammad Faisal
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Abstract

In the current digital era where content consumption via streaming platforms is increasing, the need for accurate recommendation systems is becoming increasingly important, especially in the animation industry. This research focuses on implementing a recommendation system that can help viewers easily navigate the abundance of content. By comparing collaborative filtering and content-based filtering methods, this research attempts to find the optimal approach for providing anime recommendations. From the results of A/B testing and further analysis, it was found that Collaborative Filtering was effective in providing recommendations based on similar interests between users. On the other hand, content-based filtering offers the advantage of personalizing recommendations based on content characteristics. Additionally, integrating these techniques into mobile applications will enrich the user experience, allowing them to receive recommendations more quickly and interactively. With these findings, this research contributes to the development of more intuitive and responsive recommendation systems, driving the growth of the anime streaming industry by increasing user satisfaction and retention.
分析动漫推荐系统中协同过滤和基于内容的过滤方法的有效性
在当前的数字时代,通过流媒体平台消费的内容越来越多,对精确推荐系统的需求也越来越重要,尤其是在动画行业。本研究的重点是实施一种能帮助观众轻松浏览大量内容的推荐系统。通过比较协同过滤法和基于内容的过滤法,本研究试图找到提供动漫推荐的最佳方法。从 A/B 测试和进一步分析的结果来看,协同过滤法能有效地根据用户之间相似的兴趣提供推荐。另一方面,基于内容的过滤则具有根据内容特征提供个性化推荐的优势。此外,将这些技术集成到移动应用程序中将丰富用户体验,使他们能够更快、更互动地接收推荐。有了这些发现,本研究将有助于开发更直观、反应更迅速的推荐系统,通过提高用户满意度和留存率来推动动漫流媒体行业的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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