A generalized 'adaptive expectations' formula in auto-regressive models

Ronald Britto
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引用次数: 1

Abstract

In the model of this paper the state of the system follows a linear auto-regressive process and is observed with noise. The decision-maker's problem is to estimate the current state: with a payoff function quadratic in the decision variables the optimal estimator is the conditional mean, given the observations. With the use of the Kalman filter results of interest to economists are obtained. The basic result is that the optimal estimate is a convex linear combination of the current observation and the previous optimal estimate. This is a generalization of the 'adaptive expectations' formula widely used in economics.
自回归模型中的广义“适应性期望”公式
在本文的模型中,系统的状态遵循线性自回归过程,并带噪声观察。决策者的问题是估计当前状态:在决策变量中有一个支付函数二次元,最优估计量是给定观测值的条件均值。利用卡尔曼滤波得到了经济学家感兴趣的结果。其基本结果是,最优估计是当前观测值与先前最优估计的凸线性组合。这是对经济学中广泛使用的“适应性预期”公式的概括。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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