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Incremental model selection and ensemble prediction under virtual concept drifting environments

机译:虚拟概念漂移环境下的增量模型选择和集成预测

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摘要

Model selection for machine learning systems is one of the most important issues to be addressed for obtaining greater generalization capabilities. This paper proposes a strategy to achieve model selection incrementally under virtual concept drifting environments, where the distribution of learning samples varies over time. To carry out incremental model selection, the system generally uses all the learning samples that have been observed until now. Under virtual concept drifting environments, however, the distribution of the observed samples is considerably different from the distribution of cumulative dataset so that model selection is usually unsuccessful. To overcome this problem, the author had earlier proposed the weighted objective function and model-selection criterion based on the predictive input density of the learning samples. Although the previous method described in the author’s previous study shows good performances to some datasets, it occasionally fails to yield appropriate learning results because of the failure in the prediction of the actual input density. To reduce the adverse effect, the method proposed in this paper improves on the previously described method to yield the desired outputs using an ensemble of the constructed radial basis function neural networks (RBFNNs).
机译:机器学习系统的模型选择是获得更大泛化能力所要解决的最重要问题之一。本文提出了一种在虚拟概念漂移环境下逐步实现模型选择的策略,其中学习样本的分布随时间变化。为了进行增量模型选择,系统通常使用到目前为止已观察到的所有学习样本。但是,在虚拟概念漂移环境下,观察到的样本的分布与累积数据集的分布有很大不同,因此模型选择通常是不成功的。为了克服这个问题,作者较早地提出了基于学习样本的预测输入密度的加权目标函数和模型选择标准。尽管作者先前研究中描述的先前方法对某些数据集表现出良好的性能,但由于无法预测实际输入密度,因此有时无法产生适当的学习结果。为了减少不利影响,本文提出的方法对先前描述的方法进行了改进,以使用一组构造的径向基函数神经网络(RBFNN)产生所需的输出。

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