A collaborative filtering method by fusion of facial information features

Shuo Wang, Jing Yang, Yue Yang
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引用次数: 0

Abstract

Personalized recommendation systems fundamentally assess user preferences as a reflection of their emotional responses to items. Traditional recommendation algorithms, focusing primarily on numerical processing, often overlook emotional factors, leading to reduced accuracy and limited application scenarios. This paper introduces a collaborative filtering recommendation method that integrates features of facial information, derived from emotions extracted from such data. Upon user authorization for camera usage, the system captures facial information features. Owing to the diversity in facial information, deep learning methods classify these features, employing the classification results as emotional labels. This approach calculates the similarity between emotional and item labels, reducing the ambiguity inherent in facial information features. The fusion process of facial information takes into account the user’s emotional state prior to item interaction, which might influence the emotions generated during the interaction. Variance is utilized to measure emotional fluctuations, thereby circumventing misjudgments caused by sustained non-interactive emotions. In selecting the nearest neighboring users, the method considers not only the similarity in user ratings but also in their emotional responses. Tests conducted using the Movielens dataset reveal that the proposed method, modeling facial features, more effectively aligns recommendations with user preferences and significantly enhances the algorithm’s performance.
融合面部信息特征的协同过滤方法
个性化推荐系统从根本上评估了用户的偏好,反映了他们对物品的情感反应。传统的推荐算法主要侧重于数字处理,往往忽略了情感因素,导致准确性降低,应用场景有限。本文介绍了一种协同过滤推荐方法,该方法整合了面部信息的特征,并从这些数据中提取了情感因素。在用户授权使用摄像头后,系统会捕捉面部信息特征。由于面部信息的多样性,深度学习方法对这些特征进行分类,并将分类结果作为情感标签。这种方法计算情感标签和项目标签之间的相似性,减少了面部信息特征固有的模糊性。面部信息的融合过程考虑到了用户在项目交互前的情绪状态,这可能会影响交互过程中产生的情绪。利用方差来衡量情绪波动,从而避免因持续的非互动情绪而造成的误判。在选择最近的相邻用户时,该方法不仅考虑了用户评分的相似性,还考虑了他们情绪反应的相似性。使用 Movielens 数据集进行的测试表明,所提出的方法以面部特征为模型,更有效地使推荐符合用户偏好,并显著提高了算法的性能。
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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