首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >UWFP-Outlier: an efficient frequent-pattern-based outlier detection method for uncertain weighted data streams
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UWFP-Outlier: an efficient frequent-pattern-based outlier detection method for uncertain weighted data streams

机译:UWFP - 异常值:基于有效的基于频繁模式的异常转速检测方法,用于不确定加权数据流

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摘要

In this paper, we propose an efficient frequent-pattern-based outlier detection method, namely, UWFP-Outlier, for identifying the implicit outliers from uncertain weighted data streams. For reducing the time cost of the UWFP-Outlier method, in the weighted frequent pattern mining phase, we introduce the concepts of themaximal weightandmaximal probabilityto form a compact anti-monotonic property, thereby reducing the scale of potential extensible patterns. For accurately detecting the outliers, in the outlier detection phase, we design two deviation indices to measure the deviation degree of each transaction in the uncertain weighted data streams by considering more factors that may influence its deviation degree; then, the transactions which have large deviation degrees are judged as outliers. The experimental results indicate that the proposed UWFP-Outlier method can accurately detect the outliers from uncertain weighted data streams with a lower time cost.
机译:在本文中,我们提出了一种高效的频繁模式的异常值检测方法,即UWFP异常值,用于识别来自不确定加权数据流的隐式异常值。 为了减少UWFP-vielter方法的时间成本,在加权频繁模式挖掘阶段,我们介绍了明显的重量和Maximal概率概念形成了紧凑的抗单调性质,从而降低了潜在可伸缩模式的规模。 为了精确地检测到异常值,在异常检测阶段,我们设计两个偏差指数,以通过考虑更多可能影响其偏差程度的因素来测量不确定的加权数据流中的每个事务的偏差程度; 然后,将具有大偏差度的交易被判断为异常值。 实验结果表明,所提出的UWFP-vielter方法可以准确地检测来自不确定加权数据流的异常值,以较低的时间成本。

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