Noise Modeling with Associative Corruption Rules

Yan Zhang, Xindong Wu
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引用次数: 6

Abstract

This paper presents an active learning approach to the problem of systematic noise inference and noise elimination, specifically the inference of Associated Corruption (AC) rules. AC rules are defined to simulate a common noise formation process in real-world data, in which the occurrence of an error on one attribute is dependent on several other attribute values. Our approach consists of two algorithms, Associative Corruption Forward (ACF) and Associative Corruption Backward (ACB). Algorithm ACF is proposed for noise inference, and ACB is designed for noise elimination. The experimental results show that the ACF algorithm can infer the noise formation correctly, and ACB indeed enhances the data quality for supervised learning.
基于关联腐败规则的噪声建模
本文提出了一种主动学习方法来解决系统噪声推断和噪声消除问题,特别是关联腐败(AC)规则的推断。定义AC规则是为了模拟真实数据中常见的噪声形成过程,其中一个属性上的错误的发生取决于其他几个属性值。我们的方法包括两个算法,关联前向腐败(ACF)和关联后向腐败(ACB)。提出了ACF算法用于噪声推断,ACB算法用于噪声消除。实验结果表明,ACF算法可以正确地推断噪声的形成,ACB确实提高了监督学习的数据质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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