XPL-CF:基于特征的协同过滤的可解释嵌入

Faisal M. Almutairi, N. Sidiropoulos, Bo Yang
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引用次数: 2

摘要

协同过滤(CF)方法正在广泛的应用中影响着我们的日常生活,包括推荐系统和个性化。潜在因素方法,如矩阵分解(MF),在CF中一直是最先进的,但是它们缺乏可解释性,并且不能为其预测提供直接的解释。可解释性在推荐系统中越来越受欢迎,因为一个好的解释可以动摇一个犹豫不决的用户。大多数最新的可解释推荐方法需要辅助数据,如评论文本或项目内容在项目评级之上。在本文中,我们解决了没有额外数据可用的情况,并提出用先验将每个用户的嵌入编码为项目嵌入的稀疏线性组合来扩展CF的经典MF框架,反之亦然。我们的XPL-CF方法自动揭示了这些用户-项目关系,这些关系是潜在因素的基础,并解释了最终推荐是如何形成的。我们展示了XPL-CF处理来自不同应用领域的真实数据的有效性。我们还通过数值计算和案例分析来评估从XPL-CF中得到的用户-项目关系的可解释性。
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XPL-CF: Explainable Embeddings for Feature-based Collaborative Filtering
Collaborative filtering (CF) methods are making an impact on our daily lives in a wide range of applications, including recommender systems and personalization. Latent factor methods, e.g., matrix factorization (MF), have been the state-of-the-art in CF, however they lack interpretability and do not provide a straightforward explanation for their predictions. Explainability is gaining momentum in recommender systems for accountability, and because a good explanation can swing an undecided user. Most recent explainable recommendation methods require auxiliary data such as review text or item content on top of item ratings. In this paper, we address the case where no additional data are available and propose augmenting the classical MF framework for CF with a prior that encodes each user's embedding as a sparse linear combination of item embeddings, and vice versa for each item embedding. Our XPL-CF approach automatically reveals these user-item relationships, which underpin the latent factors and explain how the resulting recommendations are formed. We showcase the effectiveness of XPL-CF on real data from various application domains. We also evaluate the explainability of the user-item relationship obtained from XPL-CF through numeric evaluation and case study examples.
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