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AN EFFICIENT PERFORMANCE ANALYSIS USING COLLABORATIVE RECOMMENDATION SYSTEM ON BIG DATA

机译:利用大数据协作推荐系统的有效性能分析

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In all the technological fields, the data size increases very rapidly and also database becomes very bulk in size. Users using bulk databases confront several challenges, such as determining which query produces the most relevant results. As the number of users has increased dramatically in recent years, there have been various competitions for recommendation systems. For enhancing or building recommendation systems all most or commonly everybody come up with an idea of collaborative filtering technique. When database or the data size increases it also reflect the processing time consumed and as well as the proposals will have potential. It is the best errand to give proposal to huge scope issues to create high greatness suggestions. Nonetheless, several approaches for the expansion of the recommender framework have been presented. Perhaps, the most and famous popular framework in for modern large datasets is Map Reduce, due to the outstanding features as gullibility, fault-tolerance, ease and effective of programming, flexibility. This paper aims to state the enlightening the status of effective and parallel query processing using Apache Mahout, Map Reduce and collaborative filtering.
机译:在所有技术领域中,数据大小都非常迅速增加,并且数据库的大小变得非常批量。使用批量数据库的用户面对几个挑战,例如确定哪个查询产生最相关的结果。由于近年来,由于用户的数量急剧增加,推荐系统已经有各种各样的竞争。为了增强或建议推荐系统,最多或通常每个人都提出了协同过滤技术的想法。当数据库或数据大小增加时,它也反映了所消耗的处理时间以及提案将具有潜力。为巨大的范围问题提出建议是最好的差事,以创造高伟大的建议。尽管如此,已经提出了几种扩展推荐人框架的方法。也许,最着名的流行框架在现代大型数据集中是地图减少,由于卓越的功能,容错,轻松和编程,灵活性有效。本文旨在说明使用Apache Mahout,MAP减少和协作滤波的有效和并行查询处理的启发状态。

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