A review on method of stream data classification through tree based approach

Jyoti Wagde, Prarthana A. Deshkar
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引用次数: 2

Abstract

Today, rapid growth in hardware technology has provided a means to generate huge volume of data continuously. Most of the real time data stream application such as network monitoring, stock market and URL filtering we found that the volume of data is so large that it may be impossible to store the data on disk. Furthermore, even if the data can be stored on the disk, the volume of the incoming data may be so large that it may be difficult to process any particular record more than once. These large volumes of data need to be mined for getting interesting patterns and relevant information out of it. Consequently, we need further enhanced technique for, data stream classification while dealing with various challenges which are not solved by traditional data mining methods such as large volume, concept drift, and concept evolution.
基于树的流数据分类方法综述
如今,硬件技术的快速发展为持续产生海量数据提供了手段。在网络监控、股票市场和URL过滤等实时数据流应用中,我们发现数据量非常大,可能无法将数据存储在磁盘上。此外,即使数据可以存储在磁盘上,传入的数据量也可能非常大,以至于很难多次处理任何特定的记录。需要对这些大量数据进行挖掘,以便从中获得有趣的模式和相关信息。因此,在处理大数据量、概念漂移、概念演化等传统数据挖掘方法无法解决的问题的同时,还需要进一步提高数据流分类技术。
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