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Model Validation for Model Selection

机译:模型选择的模型验证

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摘要

Gaussian mixture modelling is used to provide a semi-parametric density description for a given data set. The fundamental problem with this approach is that the number of mixtures required to adequately describe the data is not known in advance. In our previous work [12] we introduced a new concept, termed Predictive Validation as a basis for an automatic method to select the number of components. In this paper we investigate the influence of the various parameters in our model selection method in order to develop it into an operational tool. We also demonstrate the utility of our model validation method to two applications in which the selected models are used for supervised classification and outlier detection tasks.
机译:高斯混合建模用于提供给定数据集的半参数密度描述。这种方法的基本问题是,需要提前知道充分描述数据所需的混合物的数量。在我们以前的工作[12]我们介绍了一个新的概念,称为预测验证作为选择组件数量的自动方法的基础。在本文中,我们研究了我们模型选择方法中各种参数的影响,以便将其发展成操作工具。我们还演示了我们的模型验证方法对两个应用程序的实用程序,其中所选模型用于监督分类和异常值检测任务。

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