基于用户偏好的动态聚类个性化推荐案例推理

Jianyang Li, Hongseng Wu, Wenyan Zuo, Hongyu Tang
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引用次数: 0

摘要

用户数据稀疏性的存在是不可避免的,因为用户在推荐系统中只与感兴趣的项目进行交互,而网络资源的丰富性增加了数据的规模,最终使得系统数据更加稀疏,严重影响了推荐系统的性能。为了平衡计算复杂性和系统效率,许多研究都突出了对这些空缺进行显式或隐式补充的问题。提出CBR-recommender从用户真正交互的内容中学习用户偏好,保持个性化信息的完整性和童真性,结合cover算法将稀有物品的特征划分到特定的域,实现高个性化要求。实验结果表明,新系统在动态计算用户偏好的大规模推荐研究中运行时间更短,能够以较高的用户满意度更好地满足个性化需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Case-Based Reasoning for Personalized Recommender on User Preference through Dynamic Clustering
The existence of user data sparsity is inevitable for that the user interacts only with items of interest in the recommender system, and the abundance of cyber resources increases the scale of data makes the system data more sparse eventually, they seriously affect recommender system performance. Many researches have highlighted such problems for applying supplements to those vacancies explicitly or implicitly, to balance computing complexity and the system efficiency. CBR-recommender is proposed to learn user preference from what user really interacts to keep the integrity and virginity of such personalized information, accompanied with Covering algorithm to partition the features of rare items into some specific domains, implement high personalized requirements. Our experiments results indicates that the new system has shorter running time in the research of large-scale recommendation for computing user preference dynamically, and can perform better results to meet the individual needs with high user satisfaction.
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