在直觉模糊模型中识别足够数量的最佳属性

E. Szmidt, J. Kacprzyk, Paweł Bujnowski
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引用次数: 0

摘要

模型的降维,即只指出必要数量的输入变量(属性、特征),是一项重要的任务,使不同的算法能够有效地执行。本文是我们利用Atanassov的直觉模糊集在模型中选择属性的一种新方法的延续。我们考虑分类问题,试图指出减少的属性数量,仍然得到令人满意的结果。我们对先前提出的方法进行了更详细的研究,将其与众所周知的提取参数的方法,即主成分分析(PCA),以及使用所谓增益比选择属性的方法进行了比较。我们使用来自UCI机器学习存储库的基准数据来说明我们的考虑。
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Identification of a sufficient number of the best attributes in the intuitionistic fuzzy models
Dimension reduction of the models, i.e., pointing out only the necessary number of input variables (attributes, features) is an important task enabling the efficient performance of different algorithms. This paper is a continuation of our previous works on a new method of selection of the attributes in the models making use of Atanassov's intuitionistic fuzzy sets. We consider classification problems trying to point out the reduced number of the attributes and still obtain satisfactory results. We investigate the previously proposed method in more details comparing its performance with a well-known method of extraction parameters, namely Principal Component Analysis (PCA), and with a well-known method of selecting the attributes in which the so-called Gain Ratio is used. We illustrate our considerations using benchmark data from UCI Machine Learning Repository.
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