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Nonlinear logistic discrimination via regularized radial basis functions for classifying high-dimensional data

机译:通过正则化径向基函数对高维数据进行分类的非线性逻辑识别

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摘要

A flexible nonparametric method is proposed for classifying high- dimensional data with a complex structure. The proposed method can be regarded as an extended version of linear logistic discriminant procedures, in which the linear predictor is replaced by a radial-basis-expansion predictor. Radial basis functions with a hyperparameter are used to take the information on covariates and class labels into account; this was nearly impossible within the previously proposed hybrid learning framework. The penalized maximum likelihood estimation procedure is employed to obtain stable parameter estimates. A crucial issue in the model-construction process is the choice of a suitable model from candidates. This issue is examined from information-theoretic and Bayesian viewpoints and we employed Ando et al. (Japanese Journal of Applied Statistics, 31, 123-139, 2002)'s model evaluation criteria. The proposed method is available not only for the high-dimensional data but also for the variable selection problem. Real data analysis and Monte Carlo experiments show that our proposed method performs well in classifying future observations in practical situations. The simulation results also show that the use of the hyperparameter in the basis functions improves the prediction performance.
机译:提出了一种灵活的非参数方法来对具有复杂结构的高维数据进行分类。所提出的方法可以看作是线性逻辑判别过程的扩展版本,其中线性预测器被径向基展开预测器代替。具有超参数的径向基函数用于考虑协变量和类标签的信息;在先前提出的混合学习框架中,这几乎是不可能的。惩罚最大似然估计程序用于获得稳定的参数估计。在模型构建过程中的关键问题是从候选人中选择合适的模型。从信息理论和贝叶斯的角度研究了这个问题,我们聘用了安藤等人。 (日本应用统计杂志,31,123-139,2002)的模型评估标准。所提出的方法不仅可用于高维数据,而且可用于变量选择问题。实际数据分析和蒙特卡洛实验表明,我们提出的方法在实际情况下对将来的观测进行分类时效果很好。仿真结果还表明,在基本函数中使用超参数可以提高预测性能。

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