基于用户档案特征的个性化电影推荐协同过滤冷启动问题解决方法

Lasitha Uyangoda, S. Ahangama, Tharindu Ranasinghe
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引用次数: 8

摘要

随着web 2.0的普及,产生了大量与电影相关的用户生成内容。随着数据的持续指数增长,人们发现很难做出明智和及时的决定,因此对推荐系统的需求是不可避免的。电影推荐系统帮助用户找到下一个兴趣或最佳推荐。在该方法中,作者通过评级应用用户与物品交互产生的用户特征分数关系来优化推荐系统中使用的预测算法的输入参数,以提高过去用户记录较少的预测的准确性。这解决了协同过滤的一个主要缺点,即冷启动问题,与基本协同过滤算法相比,改进了8.4%。使用“MovieLens 100k数据集”进行系统的用户特征生成和评估。所提出的系统也可以推广到其他领域。
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 Feature-Based Approach to Address the Cold Start Problem in Collaborative Filtering for Personalized Movie Recommendation
A huge amount of user generated content related to movies is created with the popularization of web 2.0. With these continues exponential growth of data, there is an inevitable need for recommender systems as people find it difficult to make informed and timely decisions. Movie recommendation systems assist users to find the next interest or the best recommendation. In this proposed approach the authors apply the relationship of user feature-scores derived from user-item interaction via ratings to optimize the prediction algorithm’s input parameters used in the recommender system to improve the accuracy of predictions with less past user records. This addresses a major drawback in collaborative filtering, the cold start problem by showing an improvement of 8.4% compared to the base collaborative filtering algorithm. The user-feature generation and evaluation of the system is carried out using the ‘MovieLens 100k dataset’. The proposed system can be generalized to other domains as well.
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