Dionisios N. Sotiropoulos, Christos Giannoulis, G. Tsihrintzis
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引用次数: 3
摘要
当数据类的先验概率差异很大时,就会出现类不平衡的分类问题。使用单类分类器是解决这类问题的主要方法之一。在极端类不平衡的分类问题中,我们对单类分类算法进行了比较研究。基于人工免疫系统理论的实值负选择算法(Real value Negative Selection Algorithm, RVNSA)对一类分类器的分类精度进行了评价,目前尚无相关研究。将其性能与14种被认为是单类分类问题中最先进的分类算法的性能进行了比较。
A comparative study of one-class classifiers in machine learning problems with extreme class imbalance
Classification problems with class imbalance occur when prior probabilities for the data classes differ significantly. The use of one-class classifiers is one of the main approaches to solving such problems. We conduct a comparative study of one-class classification algorithms in classification problems with extreme class imbalance. Emphasis is placed on evaluation of the classificatory accuracy of a one-class classifier based on the Real Valued Negative Selection Algorithm (RVNSA) from Artificial Immune Systems theory, as there are no previous studies focusing on it. Its performance is compared to the performance of 14 alternative classification algorithms which are considered as state of the art in one-class classification problems.