基于用户档案的推荐引擎缓解冷启动问题

Elisabeth Mayrhuber, O. Krauss
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引用次数: 0

摘要

推荐系统可以用于日常生活中的许多场合。在社交媒体网络上推荐人、各种在线商店中的产品、音乐或电影只是这些系统的几个用例。当没有关于新用户或不经常使用的用户的信息时,冷启动问题对推荐系统来说是一个挑战。我们处理为餐厅访客创建餐厅和类别推荐。根据用户配置文件使用不同的度量和技术生成推荐,以使推荐尽可能个性化。我们使用k-Means和Mean-Shift对用户进行聚类,为使用基于用户和基于内容的协同过滤方法生成的推荐建立基础。这些建议考虑餐馆的位置、用户和餐馆之间的相似性以及用户给出的评分。我们利用矩阵分解和空间信息对过去很少去餐厅的用户缓解冷启动问题。根据其他用户行为对推荐进行评估和调整,以获得更好的结果。因此,我们可以通过应用程序编程接口(API)查询推荐,API由位置和基于用户的推荐混合组成,通过探索和利用相结合来满足用户的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User Profile-Based Recommendation Engine Mitigating the Cold-Start Problem
Recommendation systems can be used in many situations in daily life. Recommending people on social media networks, products in various online shops, music, or movies are only a few use cases of these systems. The cold start problem, when no information about a new or infrequent user is available, is challenging for recommendation systems. We deal with creating restaurant and category recommendations for restaurant visitors. Recommendations are generated with different metrics and technologies based on user profiles to make recommendations as individual as possible. We use k-Means and Mean-Shift for clustering users to build a base for recommendations generated using user-based and content-based collaborative filtering methods. These suggestions consider the location of restaurants, the similarity between users and restaurants, and the ratings users give. We mitigate the cold-start problem by using matrix factorization and spatial information for users with few restaurant visits in the past. Recommendations are evaluated and adapted as a result of other user behavior to obtain better results. As a result, we can query recommendations via an Application Programming Interface (API), which consist of a mixture of location and user-based recommendation to please the users' needs by combining exploration and exploitation.
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