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Linguistic Decision Trees for Fusing Tidal Surge Forecasting Models

机译:融合潮汐预报模型的语言决策树

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The use of linguistic decision trees as represented within the label semantics framework, is proposed for the fusion of multiple forecasting models. The learning algorithm LID3 is applied to infer a decision tree with branches representing a set of rules each identifying a probability distribution on the available models and where the constraints in each rule are generated from fuzzy labels describing the relevant input attributes. The resulting aggregated forecast for a given vector of input attributes x, is then taken to be the mean value of the forecasts from each model relative to a probability distribution on models conditional on x as determined from the linguistic decision tree. The potential of this approach is then investigated through its application to the fusion of tidal surge forecasting models for the east coast of the UK.
机译:提出了在标签语义框架内表示的语言决策树的使用,以用于多种预测模型的融合。应用学习算法LID3来推导决策树,其中的分支代表一组规则,每个分支标识可用模型上的概率分布,并且其中每个规则中的约束是从描述相关输入属性的模糊标签生成的。然后,将输入属性x的给定向量的结果汇总预测作为每个模型的预测平均值,相对于从语言决策树确定的以x为条件的模型上的概率分布而言。然后,通过将该方法应用于英国东海岸的潮汐潮预报模型的融合,来研究这种方法的潜力。

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