流数据分类

Srilakshmi Annapoorna, P. V. Mirnalinee
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引用次数: 4

摘要

在不断发展的大数据技术中,高速数据流发挥着至关重要的作用,因为数据的模式正在随着时间的推移而变化。数据流中的时间模式变化导致称为概念漂移的概念演变,其中数据的统计属性随时间而变化,并且考虑到漂移,以便更新旧的和过时的分类器,使其适应新数据的到来和模式的变化。为了对流数据进行分类,需要设计一种可扩展的高效分类算法,在高速数据存在概念漂移的情况下,对数据进行完美的分类,使误分类率降到最低。为了降低计算复杂度,必须减少分类器的训练时间。为了减少训练时间和处理高速数据,本文提出了一种基于分层随机采样和布隆滤波的随机森林算法。通过采样分类、滤波分类和采样滤波分类,得到了良好的实验结果。这通过减少分类器的训练时间和测试时间来提高算法的性能,而分类精度的损失可以忽略不计。
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Streaming data classification
In the evolving technology of big data, high velocity data streams play a vital role since pattern of data is being changed over time. The temporal pattern change in data stream leads to a concept evolution called concept drift where statistical properties of data differs from time to time and the drift is taken into account in order to update old and outdated classifier and make it adaptable to new data arrival and pattern change over. In order to classify the stream data, a scalable efficient classification algorithm is to be designed which perfectly classifies the data with minimizing misclassification rate in presence of concept drift due to high velocity data. Training time of the classifier must be reduced in order to reduce computational complexity. In this work, a novel algorithm has been implemented using Random Forest with stratified random sampling and Bloom filtering in order to reduce the training time and to handle high velocity data. Experimental results are shown by performing classification with sampling, classification with filtering and classification with sampling and filtering. This enhances the performance of the algorithm by decreasing the training time and testing time of the classifier with negligible compromise in accuracy of classification.
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