Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence

This paper provides a new approach to recover relative entropy measures of contemporaneous dependence from limited information by constructing the most entropic copula (MEC) and its canonical form, namely the most entropic canonical copula (MECC). The MECC can effectively be obtained by maximizing S...

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Main Authors: Ba Chu, Stephen Satchell
Format: Article
Language:English
Published: MDPI AG 2016-03-01
Series:Econometrics
Subjects:
Online Access:http://www.mdpi.com/2225-1146/4/2/20
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spelling doaj-77a4f32dc38d43a48c0f040015c8a7932020-11-24T20:49:16ZengMDPI AGEconometrics2225-11462016-03-01422010.3390/econometrics4020020econometrics4020020Recovering the Most Entropic Copulas from Preliminary Knowledge of DependenceBa Chu0Stephen Satchell1Department of Economics, Carleton University, B-857 Loeb Building, 1125 Colonel By Drive, Ottawa, ON K1S 5B6, CanadaTrinity College, University of Cambridge, Cambridge CB2 1TQ, UKThis paper provides a new approach to recover relative entropy measures of contemporaneous dependence from limited information by constructing the most entropic copula (MEC) and its canonical form, namely the most entropic canonical copula (MECC). The MECC can effectively be obtained by maximizing Shannon entropy to yield a proper copula such that known dependence structures of data (e.g., measures of association) are matched to their empirical counterparts. In fact the problem of maximizing the entropy of copulas is the dual to the problem of minimizing the Kullback-Leibler cross entropy (KLCE) of joint probability densities when the marginal probability densities are fixed. Our simulation study shows that the proposed MEC estimator can potentially outperform many other copula estimators in finite samples.http://www.mdpi.com/2225-1146/4/2/20entropyrelative entropy measure of joint dependencecopulamost entropic copulacanonicalkullback-Leibler cross entropy
collection DOAJ
language English
format Article
sources DOAJ
author Ba Chu
Stephen Satchell
spellingShingle Ba Chu
Stephen Satchell
Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
Econometrics
entropy
relative entropy measure of joint dependence
copula
most entropic copula
canonical
kullback-Leibler cross entropy
author_facet Ba Chu
Stephen Satchell
author_sort Ba Chu
title Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
title_short Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
title_full Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
title_fullStr Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
title_full_unstemmed Recovering the Most Entropic Copulas from Preliminary Knowledge of Dependence
title_sort recovering the most entropic copulas from preliminary knowledge of dependence
publisher MDPI AG
series Econometrics
issn 2225-1146
publishDate 2016-03-01
description This paper provides a new approach to recover relative entropy measures of contemporaneous dependence from limited information by constructing the most entropic copula (MEC) and its canonical form, namely the most entropic canonical copula (MECC). The MECC can effectively be obtained by maximizing Shannon entropy to yield a proper copula such that known dependence structures of data (e.g., measures of association) are matched to their empirical counterparts. In fact the problem of maximizing the entropy of copulas is the dual to the problem of minimizing the Kullback-Leibler cross entropy (KLCE) of joint probability densities when the marginal probability densities are fixed. Our simulation study shows that the proposed MEC estimator can potentially outperform many other copula estimators in finite samples.
topic entropy
relative entropy measure of joint dependence
copula
most entropic copula
canonical
kullback-Leibler cross entropy
url http://www.mdpi.com/2225-1146/4/2/20
work_keys_str_mv AT bachu recoveringthemostentropiccopulasfrompreliminaryknowledgeofdependence
AT stephensatchell recoveringthemostentropiccopulasfrompreliminaryknowledgeofdependence
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