The Empirical Minimum Variance Hedge

Thumbnail Image
Date
1993-06-01
Authors
Major Professor
Advisor
Committee Member
Journal Title
Journal ISSN
Volume Title
Publisher
Authors
Person
Hayes, Dermot
Distinguished Professor
Person
Lence, Sergio
Professor
Research Projects
Organizational Units
Journal Issue
Is Version Of
Versions
Series
Department
Center for Agricultural and Rural Development
Abstract

Decision making under unknown true parameters (estimation risk) is discussed along with Bayes and parameter certainty equivalent (PCE) criteria. Bayes criterion provides the solution for optimal decision making under estimation risk in a manner consistent with expected utility maximization. The PCE method is not consistent with expected utility maximization, but is the approach commonly used.

Bayes criterion is applied to solve for the minimum variance hedge ratio (MVH) in two scenarios based on the multivariate normal distribution. Simulations show that discrepancies between prior and sample parameters may lead to substantial differences between Bayesian and PCE MVHs. Such discrepancies also highlight the superiority of Bayes criterion over the PCE, in the sense that the PCE method cannot not yield decision rules that contain prior (or nonsample) along with sample information.

Comments
Description
Keywords
Citation
DOI
Source
Subject Categories
Copyright
Collections