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Misspecification of noncausal order in autoregressive processes

机译:归类于自回归流程中的非共同命令

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This paper examines noncausal order misspecification in noncausal and mixed processes. We consider the constrained maximum likelihood (ML) estimators of autoregressive parameters obtained when noncausal order s is fixed and potentially different from the true order so. The effect of such noncausal order misspecification on the constrained ML estimators of the autoregressive parameters is examined by means of the binding function. We find that, surprisingly, the misspecified estimators are consistent over significant regions of the parameter space. Next, we examine the properties of the unconstrained ML estimators which is obtained when the objective function is maximized with respect to all model parameters, including the noncausal order s. In this context, we prove the consistency of s and derive its speed of convergence and asymptotic distribution. However, as the noncausal order is integer-valued, the problem of identifying s concerns rather model selection than standard estimation. We also find that mixed models of different noncausal orders and with the same total autoregressive order are non-nested. This allows us to propose a new approach for robust identification of the noncausal order from a battery of direct and indirect encompassing tests. These tests are based on the difference between the constrained maximum likelihood and indirect inference estimators of the parameters characterizing the mixed causal/noncausal dynamics. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文审查了非共同和混合过程中的非共核命令误解。我们考虑当非共同顺序S固定和可能与真正顺序不同时获得的自回归参数的约束最大可能性(ML)估计。通过绑定功能检查这些非共核命令误解对自动参数的约束ML估计的影响。我们发现,令人惊讶的是,误报估计器在参数空间的重要区域上是一致的。接下来,我们检查当目标函数相对于所有模型参数最大化时获得的无约会M1估计器的性质,包括非共同序列S.在这种情况下,我们证明了S的一致性并导出其收敛速度和渐近分布。然而,由于非共同令是整数值,因此识别S涉及的问题,而是模型选择而不是标准估计。我们还发现不同的非共同订单和相同的自回归顺序的混合模型是非嵌套的。这使我们能够提出一种新的方法,可以从直接和间接相关测试的电池中稳健识别非共同顺序。这些测试基于所约束的最大似然和间接推理估计的差异,其参数表征混合因果/非共轨动态。 (c)2018 Elsevier B.v.保留所有权利。

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