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Deterministic Concept Drift Detection in Ensemble Classifier Based Data Stream Classification Process

机译:基于集成分类器的数据流分类过程中的确定性概念漂移检测

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摘要

The data in streaming environment tends to be non-stationary. Hence, frequent and irregular changes occur in data, which usually denotes as a concept drift related to the process of classifying data streams. Depiction of the concept drift in traditional phase of data stream mining demands availability of labelled samples; however, incorporating the label to a streamlining transaction is infeasible in terms of process time and resource utilization. In this article, deterministic concept drift detection (DCDD) in ensemble classifier-based data stream classification process is proposed, which can depict a concept drift regardless of the labels assigned to samples. The depicted model of DCDD is evaluated by experimental study on dataset called poker-hand. The experimental result showing that the proposed model is accurate and scalable to detect concept drift with high drift detection rate and minimal false alarming and missing rate that compared to other contemporary models.
机译:流环境中的数据往往是不稳定的。因此,数据中经常发生不规则的变化,这通常表示与数据流分类过程有关的概念漂移。传统数据流挖掘阶段中概念漂移的描述需要标记样本的可用性。但是,就流程时间和资源利用率而言,将标签合并到简化的交易中是不可行的。在本文中,提出了基于整体分类器的数据流分类过程中的确定性概念漂移检测(DCDD),它可以描述概念漂移,而与分配给样本的标签无关。所描述的DCDD模型是通过对称为“扑克手”的数据集进行实验研究而评估的。实验结果表明,与其他当代模型相比,该模型具有较高的漂移检测率和最小的虚警率和漏失率,能够准确,可扩展地检测概念漂移。

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