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GEP-based classifier for mining imbalanced data

机译:基于GEP的分类器,用于挖掘数据

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摘要

The paper proposes an incremental Gene Expression Programming classifier for mining imbalanced datasets. unbalanced datasets are commonly encountered in real-life applications. There exist numerous algorithms, techniques, and tools which are proposed as suitable for dealing with imbalanced class distribution. Yet, none of them seems to be able to outperform all others in all possible applications. We believe that our approach can extend the available range of learners that have proven good performance in mining imbalanced data and imbalanced streams. The idea is to adapt the GEP classifier to requirements of the imbalanced data environment with reuse of the minority class instances, and application of the incremental learning paradigm. The paper offers an overview of the related work and a detailed description of the proposed incremental learner. An extensive computational experiment, based on data from the KEEL dataset repository, proves that in numerous cases the approach is competitive to other state-of-the-art learners.
机译:本文提出了一种用于挖掘不平衡数据集的增量基因表达式编程分类器。在现实生活中通常遇到不平衡数据集。存在许多算法,技术和工具,该工具被提出适合处理不平衡的类分布。然而,他们似乎都无法在所有可能的应用中表达所有其他人。我们认为,我们的方法可以扩展可在挖掘不平衡数据和不平衡的流中证明良好性能的学习者的可用范围。该想法是使GEP分类器调整到不平衡数据环境的要求,重用少数类实例,以及应用增量学习范例的应用。本文提供了相关工作的概述以及所提出的增量学习者的详细描述。基于来自Keel DataSet储存库的数据的广泛计算实验证明,在众多情况下,该方法对其他最先进的学习者竞争。

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