针对大数据挑战的机器学习算法综述

Abhinav Rathor, Manasi Gyanchandani
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引用次数: 6

摘要

机器学习是提取数据中隐藏模式并对其进行有效预测的理想工具。这种范例的主要优点之一是对人为因素的依赖最小,这使得它能够在各种不同的来源中提供最佳的结果。它是由在机器规模上运行的数据驱动的。当要处理的数据量大、速度快、种类繁多时,它是最好的。与传统的数据分析不同,机器学习随着数据的增长而蓬勃发展。机器输入的数据越多,它就越能学习,并将结果应用于高级质量洞察。本文的目的是对机器学习算法进行比较分析,以最好地调和在预测中获得的时间和准确性方面优化性能的基础上绘制的大数据挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review at Machine Learning algorithms targeting big data challenges
Machine learning is an ideal tool for extracting the hidden patterns in the data and making efficient predictions on the same. One of the primary advantages of this paradigm is the minimal dependency on the human factors that make it to deliver its best among disparate and wide variety of sources. It is powered by data running at the machine scale. It is best when the the data is to be dealt with is large in volume, high in speed and diverse in variety. And unlike conventional analysis of data, machine learning thrives with growing data. The more data is entered into a machine, the more it can learn and apply the results for advanced quality insights. The aim of this paper is to present a comparative analysis of the Machine Learning algorithms to best reconcile Big Data challenges drawn on the basis of optimized performance with respect to time andaccuracy obtained in prediction.
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