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Parallel support vector machine used in map-reduce for risk analysis

机译:用于地图归约的并行支持向量机用于风险分析

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Now a days people are enjoying the world of data because size and amount of the data has tremendously increased which acts like an invitation to Big data. But some of the classifier techniques like Support Vector Machine (SVM) is not able to handle the huge amount of data due to it's excessive memory requirement and unreasonable complexity in algorithm tough it is one of the most popularly used classifier in machine learning field. Hence a new technique comes into picture which performs parallel algorithm in a efficient way to work data having large scale called as PSVM. In this paper we are going to discuss a PSVM model for risk analysis which is based on map-reduce, and can easily handle a huge amount of data in a distributed manner.
机译:如今,人们正在享受数据的世界,因为数据的大小和数量已大大增加,这就像对大数据的邀请一样。但是,由于支持向量机(SVM)的大量内存需求以及算法中不合理的复杂性,某些分类器技术(例如支持向量机(SVM))无法处理大量数据,因此它是机器学习领域最常用的分类器之一。因此,出现了一种新技术,它以一种有效的方式执行并行算法来处理称为PSVM的大规模数据。在本文中,我们将讨论一种基于map-reduce的PSVM风险分析模型,该模型可以轻松地以分布式方式处理大量数据。

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