Implementation of multi-criteria collaborative filtering on cluster using Apache Spark

A. Wijayanto, E. Winarko
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引用次数: 7

Abstract

Scalability is a problem commonly faced by a recommendation system that uses collaborative filtering methods. Multi-criteria collaborative filtering recommender system has the exact same problem. The performance of multi-criteria collaborative filtering is reduced when the amount of data processed by recommender system is increasing too high. This research aims to complement previous research which is to improve the scalability of multi-criteria collaborative filtering recommender system by applying scale-out approach or adding computer node to run the recommender system. The process of generating a recommendation on multi-criteria collaborative filtering recommender system will be done on multiple nodes of computer network inside a cluster using Apache Spark framework. To measure system scalability, the running time of multi-criteria collaborative filtering recommender system that are implemented as a recommender program on Apache Spark cluster will be compared in the form of speedup value. Based on test results, it is known that multi-criteria collaborative filtering on Apache Spark cluster has better running time than its sequential counterpart. Unfortunately, as the numbers of nodes inside cluster are increased, multi-criteria collaborative filtering recommender system on Apache Spark cluster does not gain ideal speedup.
基于Apache Spark的集群多准则协同过滤的实现
可扩展性是使用协同过滤方法的推荐系统通常面临的问题。多准则协同过滤推荐系统也存在同样的问题。当推荐系统处理的数据量增加过多时,会降低多准则协同过滤的性能。本研究旨在补充前人的研究成果,通过采用横向扩展方法或增加计算机节点来运行推荐系统,提高多准则协同过滤推荐系统的可扩展性。采用Apache Spark框架,在集群内的计算机网络的多个节点上生成多标准协同过滤推荐系统的推荐过程。为了衡量系统的可扩展性,我们将多准则协同过滤推荐系统作为推荐程序在Apache Spark集群上实现,并以加速值的形式对其运行时间进行比较。根据测试结果,我们知道Apache Spark集群上的多标准协同过滤比其顺序过滤具有更好的运行时间。遗憾的是,随着集群内节点数量的增加,Apache Spark集群上的多准则协同过滤推荐系统并没有获得理想的加速效果。
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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