首页> 外文会议> >Double cross-validation for performance evaluation of multi-objective genetic fuzzy systems
【24h】

Double cross-validation for performance evaluation of multi-objective genetic fuzzy systems

机译:多目标遗传模糊系统性能评估的双重交叉验证

获取原文

摘要

We propose an idea of using repeated double cross-validation to evaluate the generalization ability of multi-objective genetic fuzzy systems (MoGFS). The main advantage of MoGFS approaches is that a large number of non-dominated fuzzy rule-based systems are obtained by their single run. Each of the obtained fuzzy rule-based systems has a different tradeoff with respect to conflicting objectives such as accuracy and complexity. One controversial issue in the MoGFS field (and also in the field of multi-objective optimization in general) is how to choose the final solution from the obtained non-dominated ones. Since this selection is supposed to be done by human users, it is very difficult to rigorously discuss the generalization ability of the finally-selected fuzzy rule-based system. To tackle this difficulty, we propose the use of double cross-validation in the performance evaluation of MoGFS approaches. Double cross-validation has a nested structure of two cross-validation loops. The inner loop is used to determine the best complexity of fuzzy rule-based systems with the highest generalization ability for the training data in each run in the outer loop. That is, the inner loop plays the role of validation data. The determined best complexity is used to choose the final fuzzy rule-based system in each run in the outer loop. We explain the proposed idea by applying it to the performance evaluation of fuzzy rule-based classifiers designed by our multi-objective fuzzy genetics-based machine learning algorithm.
机译:我们提出了一种使用重复双重交叉验证来评估多目标遗传模糊系统(MoGFS)泛化能力的想法。 MoGFS方法的主要优势在于,通过单次运行即可获得大量基于非统治性模糊规则的系统。对于诸如准确性和复杂性之类的冲突目标,每个获得的基于模糊规则的系统都有不同的权衡。在MoGFS领域(以及通常在多目标优化领域),一个有争议的问题是如何从获得的非支配解中选择最终解。由于该选择应该由人类用户完成,因此很难严格讨论最终选择的基于模糊规则的系统的泛化能力。为了解决此难题,我们建议在MoGFS方法的性能评估中使用双重交叉验证。双重交叉验证具有两个交叉验证循环的嵌套结构。内循环用于确定基于模糊规则的系统的最佳复杂度,该系统具有最高的泛化能力,适用于外循环中每次运行的训练数据。也就是说,内部循环扮演着验证数据的角色。确定的最佳复杂度用于在外循环的每次运行中选择最终的基于模糊规则的系统。我们通过将其应用于我们的基于多目标模糊遗传学的机器学习算法设计的基于模糊规则的分类器的性能评估,来解释该提议的思想。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号