协同过滤推荐系统

Michael D. Ekstrand, J. Riedl, J. Konstan
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引用次数: 635

摘要

推荐系统是信息和电子商务生态系统的重要组成部分。它们代表了一种强大的方法,使用户能够过滤大量信息和产品空间。近二十年来对协同过滤的研究已经产生了各种各样的算法和丰富的工具来评估它们的性能。该领域的研究正朝着更深入地了解如何将推荐技术嵌入特定领域的方向发展。不同推荐算法所表现出的不同特征表明,推荐并不是一个放之四海而皆准的问题。特定的任务、信息需求和项目域代表了推荐器的独特问题,推荐器的设计和评估需要基于要支持的用户任务来完成。有效的部署必须从仔细分析潜在用户及其目标开始。基于这一分析,系统设计者可以选择算法并将其嵌入到周围的用户体验中。本文讨论了各种可用的选择及其含义,旨在为从业人员和研究人员介绍推荐人潜在的重要问题以及解决这些问题的当前最佳实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Filtering Recommender Systems
Recommender systems are an important part of the information and e-commerce ecosystem. They represent a powerful method for enabling users to filter through large information and product spaces. Nearly two decades of research on collaborative filtering have led to a varied set of algorithms and a rich collection of tools for evaluating their performance. Research in the field is moving in the direction of a richer understanding of how recommender technology may be embedded in specific domains. The differing personalities exhibited by different recommender algorithms show that recommendation is not a one-size-fits-all problem. Specific tasks, information needs, and item domains represent unique problems for recommenders, and design and evaluation of recommenders needs to be done based on the user tasks to be supported. Effective deployments must begin with careful analysis of prospective users and their goals. Based on this analysis, system designers have a host of options for the choice of algorithm and for its embedding in the surrounding user experience. This paper discusses a~wide variety of the choices available and their implications, aiming to provide both practicioners and researchers with an introduction to the important issues underlying recommenders and current best practices for addressing these issues.
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