分析数据集的关联结构,实现有效的模式分类

Saptarsi Goswami, A. Chakrabarti, B. Chakraborty
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引用次数: 3

摘要

模式分类或聚类在心理学和其他社会科学、生物学和医学、模式识别和数据挖掘等不同领域的广泛应用中发挥着重要作用。为了在较低的计算成本下获得较高的分类精度,目前已经开发了大量的有监督或无监督分类算法。然而,有些方法或算法对某些数据集工作得很好,而对其他数据集则表现不佳。对于任何特定的数据集,如果没有一些随机的试错过程,很难找到最合适的算法。数据集的特性似乎对分类算法有一定的影响。本文从属性内关系的角度研究了数据集的特征,并提出了一种度量MVS (multivariate score),将不同的数据集根据相关结构进行量化和分组,分为强独立、弱独立、弱相关和强相关数据集。通过63个公开的基准数据集的仿真实验,研究了不同特征选择算法在不同数据组上的性能。研究表明,单变量方法对强独立数据集的性能优于多变量方法,而多变量方法对强相关数据集的性能优于多变量方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of correlation structure of data set for efficient pattern classification
Pattern classification or clustering plays important role in a wide variety of applications in different areas like psychology and other social sciences, biology and medical sciences, pattern recognition and data mining. A lot of algorithms for supervised or unsupervised classification have been developed so far in order to achieve high classification accuracy with lower computational cost. However, some methods or algorithms work well for some of the data sets and perform poorly on others. For any particular data set, it is difficult to find out the most suitable algorithm without some random trial and error process. It seems that the characteristics of the data set might have some influence on the algorithm for classification. In this work, the data set characteristics is studied in terms of intra attribute relationship and a measure MVS (multivariate score) has been proposed to quantify and group different data sets on the basis of the correlation structure into strong independent, weak independent, weak correlated and strong correlated data set. The performance of different feature selection algorithms on different groups of data are studied by simulation experiments with 63 publicly available bench mark data sets. It has been verified that univariate methods lead to significant performance gain for strong independent data set compared to multivariate methods while multivariate methods have better performance for strong correlated data sets.
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