Inference on Sets in Finance
Victor Chernozhukov, Emre Kocatulum, Konrad Menzel

TL;DR
This paper develops new econometric inference methods for sets of models defined by smooth inequalities, improving power and invariance properties, with applications to finance models like Hansen-Jagannathan and Markowitz-Fama sets.
Contribution
It introduces confidence regions based on weighted likelihood ratio and Wald statistics that are invariant and more powerful than existing methods for inference on model sets.
Findings
New inference procedures are more powerful and invariant.
Methods produce sharper economic conclusions in empirical examples.
Framework applies to intersection bounds and multiple inequalities.
Abstract
In this paper we consider the problem of inference on a class of sets describing a collection of admissible models as solutions to a single smooth inequality. Classical and recent examples include, among others, the Hansen-Jagannathan (HJ) sets of admissible stochastic discount factors, Markowitz-Fama (MF) sets of mean-variances for asset portfolio returns, and the set of structural elasticities in Chetty (2012)'s analysis of demand with optimization frictions. We show that the econometric structure of the problem allows us to construct convenient and powerful confidence regions based upon the weighted likelihood ratio and weighted Wald (directed weighted Hausdorff) statistics. The statistics we formulate differ (in part) from existing statistics in that they enforce either exact or first order equivariance to transformations of parameters, making them especially appealing in the target…
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