首页> 外文会议>6th Pacific Rim International Conference on Artificial Intelligence, 6th, Aug 28 - Sep 1, 2000, Melbourne, Australia >Tropical Cyclone Intensity Forecasting Model: Balancing Complexity and Goodness of Fit
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Tropical Cyclone Intensity Forecasting Model: Balancing Complexity and Goodness of Fit

机译:热带气旋强度预测模型:平衡复杂性和拟合优度

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Building forecasting models for tropical cyclone intensity is one of the most challenging area in tropical cyclone research. Most, if not all, of the existing models have been built using variants of Maximum Likelihood (ML) approach. The need to partition data into two sets for model development is seen to be one of the drawbacks of ML approach in the face of limited available data. This paper proposes a way to build forecasting model using a number of model selection criteria which take the penalized-likelihood approach, namely MML, MDL, CATCF, SRM. These criteria claim to have the mechanism to balance between model complexity and goodness of fit. The models selected are then compared with the benchmark models being used in operation.
机译:建立热带气旋强度预测模型是热带气旋研究中最具挑战性的领域之一。大多数(如果不是全部)现有模型都是使用最大似然(ML)方法的变体构建的。面对有限的可用数据,将数据分为两组以进行模型开发的需求被视为ML方法的缺点之一。本文提出了一种使用多种模型选择准则构建预测模型的方法,这些准则采用了惩罚似然法,即MML,MDL,CATCF,SRM。这些标准声称具有在模型复杂性和拟合优度之间取得平衡的机制。然后将所选模型与运行中使用的基准模型进行比较。

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