进化,训练和设计神经网络集成

X. Yao
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引用次数: 0

摘要

以前关于进化神经网络的工作主要集中在单个神经网络上。然而,单片神经网络过于复杂,无法训练和进化以解决大型复杂问题。设计一组更简单的神经网络,让它们协同工作来解决一个大而复杂的问题,往往是更好的选择。这里的关键问题是如何自动设计这样的集合,使其具有最佳的泛化。本讲座介绍了进化神经网络集成、负相关学习和集成学习的多目标方法。讨论了不同学习算法之间的联系。在线/增量学习使用集成也将简要介绍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving, training and designing neural network ensembles
Previous work on evolving neural networks has focused on single neural networks. However, monolithic neural networks are too complex to train and evolve for large and complex problems. It is often better to design a collection of simpler neural networks that work cooperatively to solve a large and complex problem. The key issue here is how to design such a collection automatically so that it has the best generalisation. This talk introduces work on evolving neural network ensembles, negative correlation learning, and multi-objective approaches to ensemble learning. The links among different learning algorithms are discussed. Online/incremental learning using ensembles will also be presented briefly.
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