Transition learning for creating diverse neural networks

Yong Liu
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引用次数: 2

Abstract

Ensemble approaches have been widely applied to many real world problems as they have been growing into more complex. It is essential to create a set of different subsystems which subdivide the task. Negative correlation learning (NCL) and balanced ensemble learning (BEL) have been proposed to train a number of neural networks simultaneously and cooperatively in an ensemble. It has been found that the individual neural networks created by NCL are less different than those by BEL although NCL often displayed better performance than BEL on noisy data sets. This paper examines two types of transition learning based on NCL and BEL to observe how diversity among the individual neural networks will affect the performance of the ensemble.
转换学习用于创建不同的神经网络
集成方法已经广泛应用于许多现实世界的问题,因为它们已经变得越来越复杂。创建一组不同的子系统来细分任务是非常必要的。负相关学习(NCL)和平衡集成学习(BEL)被提出用于在一个集成中同时和协作地训练多个神经网络。研究发现,尽管NCL在噪声数据集上的表现优于BEL,但NCL创建的单个神经网络与BEL创建的神经网络差异较小。本文研究了基于NCL和BEL的两种类型的过渡学习,以观察个体神经网络之间的多样性如何影响集成的性能。
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