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Improving class noise detection and classification performance: A new two-filter CNDC model

机译:提高类噪声检测和分类性能:一个新的两滤波器CNDC模型

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摘要

Class noise is an important issue in classification with a lot of potential consequences. It can decrease the overall accuracy and increase the complexity of the induced model. This study investigates ensemble filtering, removing and relabeling noisy instances issues and proposes a new two-filter model for Class Noise Detection and Classification (CNDC). The proposed two-filter CNDC model comprises two major parts, which are noise detection and noise classification. The noise detection part involves ensemble and distance filtering to overcome ensemble issues. In latter part, a Removing-Relabeling (REM-REL) technique is proposed to enhance overall performance of noise classification. To evaluate the performance of the proposed model, several experiments were conducted on six real data sets. The proposed REM-REL technique was found to be successful to classify noisy instances. The final results showed that the proposed model led to a significant performance improvement compared with ensemble filtering. (C) 2020 Elsevier B.V. All rights reserved.
机译:类噪音是分类中具有很多潜在后果的重要问题。它可以降低整体准确性并提高诱导模型的复杂性。本研究调查了集成过滤,删除和重新标记了嘈杂的情况,并提出了一种用于类噪声检测和分类(CNDC)的新型两滤波器模型。所提出的两个过滤器CNDC模型包括两个主要部分,这是噪声检测和噪声分类。噪声检测部分涉及集合和距离过滤,以克服集合问题。在后一部分中,提出了一种卸下重新标记(REM-REL)技术来增强噪声分类的整体性能。为了评估所提出的模型的性能,在六个真实数据集上进行了几个实验。发现建议的REM-REL技术成功地分类嘈杂的情况。最终结果表明,与集合滤波相比,该模型的实施方式导致了显着的性能改进。 (c)2020 Elsevier B.V.保留所有权利。

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