首页> 外文期刊>American Journal of Agricultural Economics >Estimation of Mixture Models Using Cross-Validation Optimization: Implications for Crop Yield Distributions Modeling.
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Estimation of Mixture Models Using Cross-Validation Optimization: Implications for Crop Yield Distributions Modeling.

机译:使用交叉验证最优化的混合模型估算:对作物单产分布建模的启示。

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摘要

A critical issue in identifying an appropriate characterization of crop yield distributions is that the best-fitting distribution in an in-sample framework is not necessarily the best choice out-of-sample. This study provides a methodology for estimating flexible and efficient mixture models using cross-validation that alleviates many of these associated model selection issues. The method is illustrated in an application to the rating of group risk insurance products. Results indicate that nonparametric models often fit best in-sample but are inefficient and consistently overstate true rates, and vice versa for parametric models. The proposed model provides unbiased rates and also has desirable efficiency properties.
机译:确定合适的作物产量分布特征的关键问题是,样本内框架中最合适的分布不一定是样本外的最佳选择。这项研究提供了一种使用交叉验证来估算灵活有效的混合模型的方法,该方法可减轻许多相关的模型选择问题。该方法在集团风险保险产品评级申请中得到了说明。结果表明,非参数模型通常最适合样本内,但效率低下并且始终高估真实率,反之亦然。提出的模型提供了无偏率,并且还具有理想的效率属性。

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