An Entropy-based Data Reduction Method for Data Preprocessing

Rocco Cassandro, Quing Li, Zhaojun Li
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Abstract

The primary task in data mining is to find potential patterns or to discover hidden and useful knowledge from given data sets. However, with the increasing data quantity and exploding complexity, the capabilities of dealing with massive data becomes very crucial. The data preprocessing module is an integral part of data mining procedure, which aims to optimize input data usability for subsequent tasks such as classification, clustering, association analysis as well as other data mining algorithms. In general, data preprocessing procedures can effectively reduce the computational complexity while as possible to ensure accuracy and efficiency of prediction or classification, but meanwhile it even can assist to extract some unknown knowledge before applying more advanced data mining algorithms. This research proposes a three-patterns feature variables technique and an entropy-based data reduction (EBDR) algorithm for data preprocessing based on information theory. The goal is to explore high-purity subsets in which the values of an attribute are directly linked to specific class labels. The results of experiments demonstrate the efficacy of EBDR algorithm on datasets of varying sizes.
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一种基于熵的数据约简预处理方法
数据挖掘的主要任务是从给定的数据集中发现潜在的模式或发现隐藏的和有用的知识。然而,随着数据量的增加和复杂性的爆炸式增长,处理海量数据的能力变得非常重要。数据预处理模块是数据挖掘过程中不可缺少的一部分,其目的是优化输入数据的可用性,以便于后续的任务,如分类、聚类、关联分析以及其他数据挖掘算法。一般来说,数据预处理程序可以有效地降低计算复杂度,同时尽可能保证预测或分类的准确性和效率,同时甚至可以在应用更高级的数据挖掘算法之前,帮助提取一些未知的知识。本文提出了一种基于信息论的三模式特征变量技术和基于熵的数据约简(EBDR)算法。目标是探索高纯度的子集,其中属性的值直接链接到特定的类标签。实验结果证明了EBDR算法在不同规模数据集上的有效性。
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