A first attempt on global evolutionary undersampling for imbalanced big data

I. Triguero, M. Galar, H. Bustince, F. Herrera
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引用次数: 15

Abstract

The design of efficient big data learning models has become a common need in a great number of applications. The massive amounts of available data may hinder the use of traditional data mining techniques, especially when evolutionary algorithms are involved as a key step. Existing solutions typically follow a divide-and-conquer approach in which the data is split into several chunks that are addressed individually. Next, the partial knowledge acquired from every slice of data is aggregated in multiple ways to solve the entire problem. However, these approaches are missing a global view of the data as a whole, which may result in less accurate models. In this work we carry out a first attempt on the design of a global evolutionary undersampling model for imbalanced classification problems. These are characterised by having a highly skewed distribution of classes in which evolutionary models are being used to balance the dataset by selecting only the most relevant data. Using Apache Spark as big data technology, we have introduced a number of variations to the well-known CHC algorithm to work with very large chromosomes and reduce the costs associated to the fitness evaluation. We discuss some preliminary results, showing the great potential of this new kind of evolutionary big data model.
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对不平衡大数据的全球进化欠采样的首次尝试
设计高效的大数据学习模型已经成为大量应用中的共同需求。大量的可用数据可能会阻碍传统数据挖掘技术的使用,特别是当涉及到进化算法作为关键步骤时。现有的解决方案通常采用分而治之的方法,将数据分成几个单独寻址的块。接下来,将从每片数据中获得的部分知识以多种方式聚合以解决整个问题。然而,这些方法缺少对整个数据的全局视图,这可能导致模型不太准确。在这项工作中,我们对不平衡分类问题的全局进化欠采样模型的设计进行了首次尝试。它们的特点是具有高度倾斜的类分布,其中进化模型被用来通过只选择最相关的数据来平衡数据集。使用Apache Spark作为大数据技术,我们为著名的CHC算法引入了许多变体,以处理非常大的染色体,并降低与适应度评估相关的成本。我们讨论了一些初步结果,展示了这种新型进化大数据模型的巨大潜力。
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