Belief Movement, Uncertainty Reduction, and Rational Updating*

Author:

Augenblick Ned1,Rabin Matthew2

Affiliation:

1. University of California, Berkeley, United States

2. Harvard University, United States

Abstract

Abstract When a Bayesian learns new information and changes her beliefs, she must on average become concomitantly more certain about the state of the world. Consequently, it is rare for a Bayesian to frequently shift beliefs substantially while remaining relatively uncertain, or, conversely, become very confident with relatively little belief movement. We formalize this intuition by developing specific measures of movement and uncertainty reduction given a Bayesian’s changing beliefs over time, showing that these measures are equal in expectation and creating consequent statistical tests for Bayesianess. We then show connections between these two core concepts and four common psychological biases, suggesting that the test might be particularly good at detecting these biases. We provide support for this conclusion by simulating the performance of our test and other martingale tests. Finally, we apply our test to data sets of individual, algorithmic, and market beliefs.

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics

Reference41 articles.

1. “High Frequency Market Microstructure Noise Estimates and Liquidity Measures,”;Ait-Sahalia;Annals of Applied Statistics,2009

2. “Parametric and Nonparametric Volatility Measurement,”;Andersen;Handbook of Financial Econometrics: Tools and Techniques,2010

3. “Restrictions on Asset-Price Movements under Rational Expectations: Theory and Evidence,”;Augenblick,2018

4. “Replication Data for ‘Belief Movement, Uncertainty Reduction, and Rational Updating’,”;Augenblick,2020

5. “The Base-Rate Fallacy in Probability Judgments”;Bar-Hillel;Acta Psychologica,1980

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