Small and Unbalanced Data Set Problem in Classification

Öznur Esra Par, E. Sezer, H. Sever
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引用次数: 5

Abstract

Classification of data is difficult in case of small and unbalanced data set and this problem directly affects the classification performance. Small and / or the imbalance dataset has become a major problem in data mining. Classification algorithms are developed based on the assumption that the data sets are balanced and large enough. The most of the algorithms ignore or misclassify examples of the minority class, focus on the majority class. Small and unbalanced data set problem is frequently encountered in medical data mining due to some limitations. Within the scope of the study, the public accessible data set, hepatitis, was divided into small and imblanced data subsets, each of the data subsets were oversampled by distance based data generation methods. The oversampled data sets were classified by using four different machine learning algorithms (Artificial Neural Networks, Support Vector Machines, Naive Bayes and Decision Tree) and the classification scores were compared.
分类中的小而不平衡数据集问题
在数据集小且不平衡的情况下,数据分类是一个困难的问题,直接影响分类性能。数据集的小和/或不平衡已经成为数据挖掘中的一个主要问题。分类算法是基于假设数据集是平衡的和足够大的。大多数算法忽略或错误分类少数类的例子,关注多数类的例子。在医疗数据挖掘中,由于受到一定的限制,经常会遇到数据集小而不平衡的问题。在研究范围内,将公共可访问的肝炎数据集划分为小而不平衡的数据子集,每个数据子集都通过基于距离的数据生成方法进行过采样。使用四种不同的机器学习算法(人工神经网络、支持向量机、朴素贝叶斯和决策树)对过采样数据集进行分类,并比较分类得分。
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