Addressing Missing Attributes during Data Mining Using Frequent Itemsets and Rough Set Based Predictions

Jiye Li, N. Cercone, R. Cohen
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引用次数: 3

Abstract

In this paper, we present an improved method for predicting missing attribute values in data sets. We make use of frequent itemsets, generated from the association rules algorithm, displaying the correlations between different items in a set of transactions. In particular, we consider a database as a set of transactions and each data instance as an itemset. Then frequent itemsets can be used as a knowledge base to predict missing attribute values. Our approach integrates the RSFit method based on rough sets theory that produces faster predictions by considering similarities of attribute value pairs, but only for those attributes contained in the core or reduct of the data set. Using empirical studies on UCI and other real world data sets, we demonstrate a significant increase in prediction accuracy obtained from our new integrated approach, referred to as ItemRSFit.
使用频繁项集和基于粗糙集的预测在数据挖掘过程中寻址缺失属性
本文提出了一种改进的预测数据集中缺失属性值的方法。我们利用关联规则算法生成的频繁项集来显示一组事务中不同项之间的相关性。特别地,我们将数据库视为一组事务,将每个数据实例视为一个项集。然后频繁项集可以作为知识库预测缺失属性值。我们的方法集成了基于粗糙集理论的RSFit方法,该方法通过考虑属性值对的相似性来产生更快的预测,但仅针对数据集的核心或约简中包含的那些属性。通过对UCI和其他真实世界数据集的实证研究,我们证明了从我们的新集成方法(称为ItemRSFit)中获得的预测精度显着提高。
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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