Personalized Recommendation Mechanism Based on Collaborative Filtering in Cloud Computing Environment

Xinling Tang, Hongyan Xu, Yonghong Tan, Yanjun Gong
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引用次数: 6

Abstract

With the advent of cloud computing era and the dramatic increase in the amount of data applications, personalized recommendation technology is increasingly important. However, due to large scale and distributed processing architecture and other characteristics of cloud computing, the traditional recommendation techniques which are applied directly to the cloud computing environment will be faced with low recommendation precision, recommended delay, network overhead and other issues, leading to a sharp decline in performance recommendation. To solve these problems, the authors propose a personalized recommendation collaborative filtering mechanism RAC in the cloud computing environment. The first mechanism is to develop distributed score management strategy, by defining the candidate neighbors (CN) concept screening recommended greater impact on the results of the project set. And the authors build two stage index score based on distributed storage system, in order to ensure the recommended mechanism to locate the candidate neighbor. They propose collaborative filtering recommendation algorithm based on the candidate neighbor on this basis (CN-DCF). The target users are searched in candidate neighbors by the nearest neighbor k project score. And the target user's top-N recommendation sets are predicted. The results show that in the cloud computing environment RAC has a good recommendation accuracy and efficiency recommended.
云计算环境下基于协同过滤的个性化推荐机制
随着云计算时代的到来和数据应用数量的急剧增加,个性化推荐技术变得越来越重要。然而,由于云计算的大规模和分布式处理架构等特点,直接应用于云计算环境的传统推荐技术将面临推荐精度低、推荐延迟、网络开销等问题,导致推荐性能急剧下降。针对这些问题,作者提出了一种云计算环境下的个性化推荐协同过滤机制RAC。第一种机制是制定分布式分数管理策略,通过定义候选邻居(CN)概念筛选推荐对项目结果影响较大的集合。并基于分布式存储系统构建了两阶段索引评分,以保证推荐机制对候选邻居的定位。在此基础上提出了基于候选邻居的协同过滤推荐算法(CN-DCF)。目标用户在候选邻居中根据最近的邻居k项目分数进行搜索。并预测目标用户的前n个推荐集。结果表明,RAC在云计算环境下具有良好的推荐精度和推荐效率。
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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