推荐系统的挑战和解决方案调查

M. Mohamed, M. Khafagy, Mohamed H. Ibrahim
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引用次数: 82

摘要

今天的推荐系统是机器学习中一个相对较新的研究领域。推荐系统的主要思想是在产品和用户之间建立关系,并为特定用户选择最合适的产品。推荐系统为用户生成推荐列表的方法主要有四种:基于内容的、协作的、人口统计的和混合过滤的。在基于内容的过滤中,模型使用商品的规格来推荐具有相似属性的其他商品。协同过滤使用用户过去的行为,比如用户以前看过或购买过的物品,将用户对这些物品的评分和其他用户的物品列表得出的类似结论汇总在一起。预测用户可能会感兴趣的项目。人口统计过滤是查看用户的个人资料数据,如年龄类别,性别,教育和居住区域,找到与其他个人资料的相似之处,以获得新的推荐列表。混合过滤结合了这三种过滤技术。本文介绍了人脸推荐系统的概况、技术、面临的挑战,并列举了一些解决这些挑战的研究论文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommender Systems Challenges and Solutions Survey
Today’s Recommender system is a relatively new area of research in machine learning. The recommender system’s main idea is to build relationship between the products, users and make the decision to select the most appropriate product to a specific user. There are four main ways that recommender systems produce a list of recommendations for a user – content-based, Collaborative, Demographic and hybrid filtering. In content-based filtering the model uses specifications of an item in order to recommend additional items with similar properties. Collaborative filtering uses past behavior of the user like items that a user previously viewed or purchased, In summation to any ratings the user gave those items rate and similar conclusions made by other user’s items list. To predicts items that the user may find interesting. Demographic filtering is view user profile data like age category, gender, education and living area to find similarities with other profiles to get a new recommender list. Hybrid filtering combines all three filtering techniques. This paper introduces survey about recommendation systems, techniques, challenges the face recommender systems and list some research papers solve these challenges.
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