A soft robust model for optimization under ambiguity

dc.contributor.author

Ben-Tal, A

dc.contributor.author

Bertsimas, D

dc.contributor.author

Brown, DB

dc.date.accessioned

2011-06-21T17:31:02Z

dc.date.issued

2010-07-01

dc.description.abstract

In this paper, we propose a framework for robust optimization that relaxes the standard notion of robustness by allowing the decision maker to vary the protection level in a smooth way across the uncertainty set. We apply our approach to the problem of maximizing the expected value of a payoff function when the underlying distribution is ambiguous and therefore robustness is relevant. Our primary objective is to develop this framework and relate it to the standard notion of robustness, which deals with only a single guarantee across one uncertainty set. First, we show that our approach connects closely to the theory of convex risk measures. We show that the complexity of this approach is equivalent to that of solving a small number of standard robust problems. We then investigate the conservatism benefits and downside probability guarantees implied by this approach and compare to the standard robust approach. Finally, we illustrate theme thodology on an asset allocation example consisting of historical market data over a 25-year investment horizon and find in every case we explore that relaxing standard robustness with soft robustness yields a seemingly favorable risk-return trade-off: each case results in a higher out-of-sample expected return for a relatively minor degradation of out-of-sample downside performance. © 2010 INFORMS.

dc.description.version

Version of Record

dc.identifier.eissn

1526-5463

dc.identifier.issn

0030-364X

dc.identifier.uri

https://hdl.handle.net/10161/4438

dc.language.iso

en_US

dc.publisher

Institute for Operations Research and the Management Sciences (INFORMS)

dc.relation.ispartof

Operations Research

dc.relation.isversionof

10.1287/opre.1100.0821

dc.relation.journal

Operations research

dc.title

A soft robust model for optimization under ambiguity

dc.title.alternative
dc.type

Journal article

duke.date.pubdate

2010-8-jul

duke.description.issue

4

duke.description.volume

58

pubs.begin-page

1220

pubs.end-page

1234

pubs.issue

4 PART 2

pubs.organisational-group

Duke

pubs.organisational-group

Fuqua School of Business

pubs.publication-status

Published

pubs.volume

58

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