This paper develops a method informed by data and models to recover information about investor beliefs. Our approach uses information embedded in forward-looking asset prices in conjunction with asset pricing models. We step back from presuming rational expectations and entertain potential belief distortions bounded by a statistical measure of discrepancy. Additionally, our method allows for the direct use of sparse survey evidence to make these bounds more informative. Within our framework, market-implied beliefs may differ from those implied by rational expectations due to behavioral/psychological biases of investors, ambiguity aversion, or omitted permanent components to valuation. Formally, we represent evidence about investor beliefs using a nonlinear expectation function deduced using model-implied moment conditions and bounds on statistical divergence. We illustrate our method with a prototypical example from macrofinance using asset market data to infer belief restrictions for macroeconomic growth rates.

More on this topic

BFI Working Paper·Jun 23, 2026

Misleading Estimates from Nonlinear Models with a Binary Outcome

Brian Curran, Bruce Meyer, and Derek Wu
Topics: Uncategorized
BFI Working Paper·Jun 15, 2026

Don’t Give Up on Lab Experiments: Why the Field Still Needs the Lab

John List
Topics: Uncategorized
BFI Working Paper·May 5, 2026

Retrospective Versus Prospective Meritocracy

Steven Durlauf
Topics: Uncategorized