最佳不精确记忆和有偏差的预测

Rava Azeredo da Silveira, Yeji Sung, M. Woodford
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引用次数: 20

摘要

我们提出了一个受记忆约束的最优决策模型。约束是对使用香农互信息测量的记忆复杂性的限制,如在理性不注意模型中;但我们的理论与Sims(2003)的不同之处在于没有假设过去认知状态的无成本记忆。我们表明,该模型意味着预测和行动都将表现出特殊的随机变化;平均信念也将不同于理性预期信念,其偏差永远波动,即使从长期来看,方差也不会降至零;在预测中,近期的新闻将被给予不成比例的权重。我们在关于待预测变量的持续程度和必须预测的范围的各种假设下求解模型,并检查预测偏差的性质如何取决于这些参数。该模型为实验室和现场环境中报告的期望的许多特征提供了简单的解释,特别是Afrouzi等人(2020)和Bordalo等人(2020a)记录的在诱导预测中过度反应的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimally Imprecise Memory and Biased Forecasts
We propose a model of optimal decision making subject to a memory constraint. The constraint is a limit on the complexity of memory measured using Shannon's mutual information, as in models of rational inattention; but our theory differs from that of Sims (2003) in not assuming costless memory of past cognitive states. We show that the model implies that both forecasts and actions will exhibit idiosyncratic random variation; that average beliefs will also differ from rational-expectations beliefs, with a bias that fluctuates forever with a variance that does not fall to zero even in the long run; and that more recent news will be given disproportionate weight in forecasts. We solve the model under a variety of assumptions about the degree of persistence of the variable to be forecasted and the horizon over which it must be forecasted, and examine how the nature of forecast biases depends on these parameters. The model provides a simple explanation for a number of features of reported expectations in laboratory and field settings, notably the evidence of over-reaction in elicited forecasts documented by Afrouzi et al. (2020) and Bordalo et al. (2020a).
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