A2D2:事件前突变漂移检测

Tatiana Escovedo, Adriano Soares Koshiyama, M. Vellasco, R. Melo, A. D. Cruz
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引用次数: 1

摘要

大多数为分类问题设计的漂移检测机制都是以事后方式工作的:在完全接收到数据集(训练和测试集的模式和类标签)之后,它们应用一系列过程来识别类条件分布中的一些变化——概念漂移。然而,在某些情况下,在发生变化后才进行检测可能对监督下的过程有害。本文提出了一种用于突发漂移检测的预事件方法,称为A2D2。简而言之,该方法由三个步骤组成:(i)使用无监督方法标记来自测试集的模式;(ii)根据给定的类标签,从训练集和测试集计算一些统计量;(iii)使用多元假设检验比较训练和检验统计量。此外,还提出了一种创建具有突变漂移的数据集的方法。将该程序应用于A2D2的灵敏度分析,以了解各参数对其最终性能的影响程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A2D2: A pre-event abrupt drift detection
Most drift detection mechanisms designed for classification problems works in a post-event manner: after receiving the data set completely (patterns and class labels of the train and test set), they apply a sequence of procedures to identify some change in the class-conditional distribution - a concept drift. However, detecting changes after its occurrence can be in some situations harmful for the process under supervision. This paper proposes a pre-event approach for abrupt drift detection, called by A2D2. Briefly, this method is composed of three steps: (i) label the patterns from the test set, using an unsupervised method; (ii) compute some statistics from the train and test set, conditioned on the given class labels; and (iii) compare the train and test statistics using a multivariate hypothesis test. Also, it has been proposed a procedure for creating datasets with abrupt drift. This procedure was used in the sensivity analysis of A2D2, in order to understand the influence degree of each parameter on its final performance.
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