An efficient system using item & user-based CF techniques to improve recommendation

Celine Michael Rodrigues, S. Rathi, Ganesh V. Patil
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引用次数: 16

Abstract

Nowadays large portion of web-based businesses, research projects, and scientist use recommendation systems to help their business to thrive & flourish. Standard recommendation system utilises either user CF, item CF or content based recommendation system, these furthermore confront issues like item cold start, user cold start and real-time prediction problem. In the perspective of these challenges, cluster based hybrid CF approach is proposed in this paper which uses item-based CF algorithm combined with user demographic based CF algorithm in clusters weighted mechanism. The proposed system is adaptable and extendable which is fruitful in addressing not only user cold start issues but also item cold start issues along with sparsity problem, with lower MAE enhancing the structure to give better suggestion progressively.
一个有效的系统,使用基于项目和用户的CF技术来改进推荐
如今,很大一部分基于网络的企业、研究项目和科学家使用推荐系统来帮助他们的业务蓬勃发展。标准推荐系统采用用户CF、项目CF或基于内容的推荐系统,进一步面临项目冷启动、用户冷启动和实时预测等问题。针对这些挑战,本文提出了基于聚类的混合CF方法,该方法将基于项目的CF算法与基于用户人口统计的CF算法结合在聚类加权机制中。该系统具有较强的适应性和可扩展性,不仅解决了用户冷启动问题,而且解决了项目冷启动问题和稀疏性问题,并通过较低的MAE逐步增强了结构,给出了更好的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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