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Model averaging based on leave-subject-out cross-validation for vector autoregressions

机译:基于休假跨验证的模型平均向量自动转移

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The vector autoregressive (VAR) model is a useful tool for economic evaluation and prediction. This paper develops a leave-subject-out cross-validation model averaging (LsoMA) method to average predictions from VAR models. The approximate unbiasedness of LsoMA and its asymptotic optimality in terms of obtaining the lowest possible quadratic errors are established. The rate of the LsoMA based weights converging to the optimal weights minimizing the expected quadratic errors is also derived. Simulation experiments show that our method is generally more efficient than the other frequently used model selection and averaging methods. Two empirical applications further illustrate that the proposed method is promising. (C) 2018 Elsevier B.V. All rights reserved.
机译:矢量自动增加(var)模型是经济评估和预测的有用工具。 本文开发了休假的交叉验证模型平均(LSOMA)方法,从VAR模型的平均预测。 建立了在获得最低可能的二次误差方面的Lsoma及其渐近最优性的近似无偏见。 还导出了将基于LSOMA的权重的速率达到最小化预期的二次误差的最佳权重。 仿真实验表明,我们的方法通常比其他经常使用的模型选择和平均方法更有效。 两个经验应用进一步说明了所提出的方法是有前途的。 (c)2018 Elsevier B.v.保留所有权利。

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