文件名称:Giacomini
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这段代码提出了一个通用框架out-of-sample预测能力测试和预测模型可以misspecified时选择。它可以应用到不同类型的预测从嵌套和non-nested模型使用不同的评估技术一般损失函数(用户选择)。-This code proposes a general fr a mework for out-of-sample predictive ability testing and forecast selection when the model can be misspecified. It can be applied to different types of forecasts issued from both nested and non-nested models using different estimation techniques for a general loss function (chosen by the user). It accommodates both conditional and unconditional evaluation objectives. The null is H0: E( Loss(model A)- Loss(model B) )= 0. The sign of the test-statistics indicates which forecast performs better: a positive test-statistic indicates that model A forecast produces larger average loss than the model B forecast (model B outperforms model A), while a negative sign indicates the opposite.
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下载文件列表
CPAtest.m
NeweyWest.m
appel_CPAtest.m