SU-CCE: A Novel Feature Selection Approach for Reducing High Dimensionality

A. Pawar, M. A. Jawale, Ravi Kumar Tirandasu, S. Potharaju
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Abstract

High dimensionality is the serious issue in the preprocessing of data mining. Having large number of features in the dataset leads to several complications for classifying an unknown instance. In a initial dataspace there may be redundant and irrelevant features present, which leads to high memory consumption, and confuse the learning model created with those properties of features. Always it is advisable to select the best features and generate the classification model for better accuracy. In this research, we proposed a novel feature selection approach and Symmetrical uncertainty and Correlation Coefficient (SU-CCE) for reducing the high dimensional feature space and increasing the classification accuracy. The experiment is performed on colon cancer microarray dataset which has 2000 features. The proposed method derived 38 best features from it. To measure the strength of proposed method, top 38 features extracted by 4 traditional filter-based methods are compared with various classifiers. After careful investigation of result, the proposed approach is competing with most of the traditional methods.
SU-CCE:一种新的高维降维特征选择方法
高维是数据挖掘预处理中的一个重要问题。在数据集中拥有大量的特征会导致对未知实例进行分类的一些复杂性。在初始数据空间中可能存在冗余和不相关的特征,这会导致高内存消耗,并混淆使用这些特征属性创建的学习模型。通常,我们建议选择最佳特征并生成分类模型以获得更高的准确性。在本研究中,我们提出了一种新的特征选择方法和对称不确定性和相关系数(SU-CCE)来减少高维特征空间,提高分类精度。实验在具有2000个特征的结肠癌微阵列数据集上进行。该方法从中提取了38个最佳特征。为了衡量所提方法的强度,将4种传统的基于滤波器的方法提取的前38个特征与各种分类器进行比较。经过对结果的仔细研究,提出的方法可以与大多数传统方法相竞争。
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