Navigation auf zora.uzh.ch

Search ZORA

ZORA (Zurich Open Repository and Archive)

DDOS: due to massive botnet requests against our ‘Advanced Search’ we have restricted access to UZH (local and VPN). Thank you for your understanding.

On Bilevel Optimization with Inexact Follower

Zare, M Hosein; Prokopyev, Oleg; Sauré, Denis (2020). On Bilevel Optimization with Inexact Follower. Decision Analysis, 17(1):74-95.

Abstract

Traditionally, in the bilevel optimization framework, a leader chooses her actions by solving an upper-level problem, assuming that a follower chooses an optimal reaction by solving a lower-level problem. However, in many settings, the lower-level problems might be nontrivial, thus requiring the use of tailored algorithms for their solution. More importantly, in practice, such problems might be inexactly solved by heuristics and approximation algorithms. Motivated by this consideration, we study a broad class of bilevel optimization problems where the follower might not optimally react to the leader’s actions. In particular, we present a modeling framework in which the leader considers that the follower might use one of a number of known algorithms to solve the lower-level problem, either approximately or heuristically. Thus, the leader can hedge against the follower’s use of suboptimal solutions. We provide algorithmic implementations of the framework for a class of nonlinear bilevel knapsack problem (BKP), and we illustrate the potential impact of incorporating this realistic feature through numerical experiments in the context of defender-attacker problems.

Additional indexing

Item Type:Journal Article, not_refereed, original work
Communities & Collections:03 Faculty of Economics > Department of Business Administration
Dewey Decimal Classification:330 Economics
Scopus Subject Areas:Social Sciences & Humanities > General Decision Sciences
Language:English
Date:1 March 2020
Deposited On:09 Dec 2024 16:09
Last Modified:31 May 2025 01:35
Publisher:Institute for Operations Research and the Management Sciences (INFORMS)
ISSN:1545-8490
OA Status:Closed
Publisher DOI:https://doi.org/10.1287/deca.2019.0392
Full text not available from this repository.

Metadata Export

Statistics

Citations

Dimensions.ai Metrics
13 citations in Web of Science®
15 citations in Scopus®
Google Scholar™

Altmetrics

Authors, Affiliations, Collaborations

Similar Publications