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Statistical learning theory for fitting multimodal distribution to rainfall data: an application

机译:用于将多峰分布拟合到降雨数据的统计学习理论:一个应用

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The promising methodology of the "Statistical Learning Theory" for the estimation of multimodal distribution is thoroughly studied. The "tail" is estimated through Hill's, UH and moment methods. The threshold value is determined by nonparametric bootstrap and the minimum mean square error criterion. Further, the "body" is estimated by the nonparametric structural risk minimization method of the empirical distribution function under the regression set-up. As an illustration, rainfall data for the meteorological subdivision of Orissa, India during the period 1871-2006 are used. It is shown that Hill's method has performed the best for tail density. Finally, the combined estimated "body" and "tail" of the multimodal distribution is shown to capture the multimodality present in the data.
机译:深入研究了“统计学习理论”用于估计多峰分布的有前途的方法。 “尾部”通过希尔的,UH和矩方法估算。阈值由非参数引导程序和最小均方误差标准确定。此外,在回归设置下,通过经验分布函数的非参数结构风险最小化方法来估计“主体”。例如,使用了印度奥里萨邦(Orissa)气象分区在1871-2006年期间的降雨量数据。结果表明,希尔的方法在尾巴密度方面表现最佳。最后,显示了多模态分布的组合估计“体”和“尾部”以捕获数据中存在的多模态。

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