Optimal Policy with Occasionally Binding Constraints: Piecewise Linear Solution Methods

R. Harrison, Matt Waldron
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引用次数: 2

Abstract

This paper develops a piecewise linear toolkit for optimal policy analysis of linear rational expectations models, subject to occasionally binding constraints on (multiple) policy instruments and other variables. Optimal policy minimises a quadratic loss function under either commitment or discretion. The toolkit accounts for the presence of ‘anticipated disturbances’ to the model equations, allowing optimal policy analysis around scenarios or forecasts that are not produced using the model itself (for example, judgement-based forecasts such as those often produced by central banks). The flexibility and applicability of the toolkit to very large models is demonstrated in a variety of applications, including optimal policy experiments using a version of the Federal Reserve Board’s FRB/US model.
偶约束约束下的最优策略:分段线性求解方法
本文开发了一个分段线性工具箱,用于线性理性预期模型的最优政策分析,该模型偶尔会受到(多个)政策工具和其他变量的约束。最优策略在承诺或自由裁量权下使二次损失函数最小。该工具包解释了模型方程中存在的“预期干扰”,允许围绕不是使用模型本身产生的情景或预测(例如,通常由中央银行产生的基于判断的预测)进行最佳政策分析。该工具包对大型模型的灵活性和适用性在各种应用中得到了证明,包括使用联邦储备委员会FRB/US模型的一个版本的最佳政策实验。
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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