Optimally Imprecise Memory and Biased Forecasts

Working Paper: CEPR ID: DP15459

Authors: Rava Azeredo da Silveira; Yeji Sung; Michael Woodford

Abstract: 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).

Keywords: Rational Inattention; Overreaction; Survey Expectations

JEL Codes: D84; E03; G41


Causal Claims Network Graph

Edges that are evidenced by causal inference methods are in orange, and the rest are in light blue.


Causal Claims

CauseEffect
Constraint on memory complexity (C69)Variability of forecasts (C53)
Constraint on memory complexity (C69)Biased beliefs (D91)
Memory structure (C69)Weight given to recent information (D80)

Back to index