HYBRID RECOMMENDER FOR VIRTUAL ART COMPOSITIONS WITH VIDEO SENTIMENTS ANALYSIS

Heorhii Kuchuk, Andrii Kuliahin
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Abstract

Topicality. Recent studies confirm the growing trend to implement emotional feedback and sentiment analysis to improve the performance of recommender systems. In this way, a deeper personalization and current emotional relevance of the user experience is ensured. The subject of study in the article is a hybrid recommender system with a component of video sentiment analysis. The purpose of the article is to investigate the possibilities of improving the effectiveness of the results of the hybrid recommender system of virtual art compositions by implementing a component of video sentiment analysis. Used methods: matrix factorization methods, collaborative filtering method, content-based method, knowledge-based method, video sentiment analysis method. The following results were obtained. A new model has been created that combines a hybrid recommender system and a video sentiment analysis component. The average absolute error of the system has been significantly reduced. Added system reaction to emotional feedback in the context of user interaction with virtual art compositions. Conclusion. Thus, the system can not only select the most suitable virtual art compositions, but also create adaptive and dynamic content, which will increase user satisfaction and improve the immersive aspects of the system. A promising direction of further research may be the addition of a subsystem with a generative neural network, which will create new virtual art compositions based on the conclusions of the developed recommendation system.
利用视频情感分析的虚拟艺术作品混合推荐器
主题性。最近的研究证实,采用情感反馈和情感分析来提高推荐系统性能的趋势日益明显。通过这种方式,可以确保更深入的个性化和当前用户体验的情感相关性。本文的研究对象是带有视频情感分析组件的混合推荐系统。文章的目的是研究通过实施视频情感分析组件来提高虚拟艺术作品混合推荐系统结果有效性的可能性。使用的方法有:矩阵因式分解法、协同过滤法、基于内容的方法、基于知识的方法、视频情感分析法。结果如下创建了一个结合了混合推荐系统和视频情感分析组件的新模型。系统的平均绝对误差大幅降低。在用户与虚拟艺术作品互动的背景下,增加了系统对情感反馈的反应。结论。因此,该系统不仅可以选择最合适的虚拟艺术作品,还可以创建自适应的动态内容,从而提高用户满意度,改善系统的沉浸感。进一步研究的一个有前途的方向可能是增加一个具有生成神经网络的子系统,它将根据所开发的推荐系统的结论创建新的虚拟艺术作品。
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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