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首页> 外文期刊>International Journal of Data Science and Analytics >Automatic optimization of outlier detection ensembles using a limited number of outlier examples
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Automatic optimization of outlier detection ensembles using a limited number of outlier examples

机译:使用有限数量的异常值示例自动优化异常检测集合

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摘要

In data analysis, outliers are deviating and unexpected observations. Outlier detection is important, because outliers can contain critical and interesting information. We propose an approach for optimizing outlier detection ensembles using a limited number of outlier examples. In our work, a limited number of outlier examples are defined as from 1 to 10% of the available outliers. The optimized outlier detection ensembles consist of outlier detection algorithms, which provide an outlier score and utilize adjustable parameters. The automatic optimization determines the parameter values, which enhance the discrimination of inliers and outliers. This increases the efficiency of the outlier detection. Outliers are rare by definition, which makes the optimization with a few examples beneficial. Obtaining examples of outliers can be prohibitively challenging, and the outlier examples should be used efficiently.
机译:在数据分析中,异常值偏离和意外的观察。异常值检测很重要,因为异常值可以包含关键和有趣的信息。我们提出了一种使用有限数量的异常值示例来优化异常值检测集合的方法。在我们的工作中,有限数量的异常值示例被定义为可用异常值的1到10%。优化的异常值检测集合由异常值检测算法组成,它提供了异常值分数并利用可调参数。自动优化确定参数值,增强了inliers和异常值的辨别。这增加了异常检测的效率。异常值是罕见的定义,这使得优化与一些有益的例子。获取异常值的示例可能是过度挑战的,并且应有效使用异常示例。

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