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A study of cross-validation and bootstrap as objective functions for genetic algorithms

机译:遗传算法的交叉验证和自动启动的研究

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This article addresses the problem of finding the adjustable parameters of a learning algorithm using genetic algorithms. This problem is also known as the model selection problem. Some model selection techniques (e.g., cross-validation and bootstrap) are combined with the genetic algorithms of different ways. Those combinations explore features of the genetic algorithms such as the ability for handling multiple and noise objective functions. The proposed multiobjective GA is quite general and can be applied to a large range of learning algorithms.
机译:本文解决了使用遗传算法找到学习算法的可调参数的问题。此问题也称为模型选择问题。一些模型选择技术(例如,交叉验证和引导)与不同方式的遗传算法相结合。这些组合探讨了遗传算法的特征,例如处理多个和噪声目标功能的能力。所提出的多目标GA非常一般,可以应用于大量的学习算法。

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