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A robust missing value imputation method for noisy data

机译:噪声数据的鲁棒缺失值插补方法

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摘要

Missing data imputation is an important research topic in data mining. The impact of noise is seldom considered in previous works while real-world data often contain much noise. In this paper, we systematically investigate the impact of noise on imputation methods and propose a new imputation approach by introducing the mechanism of Group Method of Data Handling (GMDH) to deal with incomplete data with noise. The performance of four commonly used imputation methods is compared with ours, called RIBG (robust imputation based on GMDH), on nine benchmark datasets. The experimental result demonstrates that noise has a great impact on the effectiveness of imputation techniques and our method RIBG is more robust to noise than the other four imputation methods used as benchmark.
机译:丢失数据归因是数据挖掘中的重要研究课题。在以前的工作中很少考虑噪声的影响,而实际数据通常包含很多噪声。在本文中,我们系统地研究了噪声对插补方法的影响,并通过引入数据处理分组方法(GMDH)的机制来处理带噪声的不完整数据,提出了一种新的插补方法。在9个基准数据集上,将四种常用插补方法的性能与我们称为RIBG(基于GMDH的稳健插补)进行了比较。实验结果表明,噪声对插补技术的有效性有很大的影响,我们的方法RIBG对噪声的抵抗力比其他四种插补方法更强。

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