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A survey on financial applications of metaheuristics

A survey on financial applications of metaheuristics
A survey on financial applications of metaheuristics
Modern heuristics or metaheuristics are optimization algorithms that have been increasingly used during the last decades to support complex decision-making in a number of fields, such as logistics and transportation, telecommunication networks, bioinformatics, finance, and the like. The continuous increase in computing power, together with advancements in metaheuristics frameworks and parallelization strategies, are empowering these types of algorithms as one of the best alternatives to solve rich and real-life combinatorial optimization problems that arise in a number of financial and banking activities. This article reviews some of the works related to the use of metaheuristics in solving both classical and emergent problems in the finance arena. A non-exhaustive list of examples includes rich portfolio optimization, index tracking, enhanced indexation, credit risk, stock investments, financial project scheduling, option pricing, feature selection, bankruptcy and financial distress prediction, and credit risk assessment. This article also discusses some open opportunities for researchers in the field, and forecast the evolution of metaheuristics to include real-life uncertainty conditions into the optimization problems being considered.
Metaheuristics, Finance, Combinatorial optimization
0360-0300
1-23
Soler-Dominguez, Amparo
c7c6046e-4ca5-47e7-b452-a4490269ff78
Juan, Angel A.
727ca41c-da96-40ea-8ea9-b27ab03aee49
Kizys, Renatas
9d3a6c5f-075a-44f9-a1de-32315b821978
Soler-Dominguez, Amparo
c7c6046e-4ca5-47e7-b452-a4490269ff78
Juan, Angel A.
727ca41c-da96-40ea-8ea9-b27ab03aee49
Kizys, Renatas
9d3a6c5f-075a-44f9-a1de-32315b821978

Soler-Dominguez, Amparo, Juan, Angel A. and Kizys, Renatas (2017) A survey on financial applications of metaheuristics. ACM Computing Surveys, 50 (1), 1-23, [15]. (doi:10.1145/3054133).

Record type: Article

Abstract

Modern heuristics or metaheuristics are optimization algorithms that have been increasingly used during the last decades to support complex decision-making in a number of fields, such as logistics and transportation, telecommunication networks, bioinformatics, finance, and the like. The continuous increase in computing power, together with advancements in metaheuristics frameworks and parallelization strategies, are empowering these types of algorithms as one of the best alternatives to solve rich and real-life combinatorial optimization problems that arise in a number of financial and banking activities. This article reviews some of the works related to the use of metaheuristics in solving both classical and emergent problems in the finance arena. A non-exhaustive list of examples includes rich portfolio optimization, index tracking, enhanced indexation, credit risk, stock investments, financial project scheduling, option pricing, feature selection, bankruptcy and financial distress prediction, and credit risk assessment. This article also discusses some open opportunities for researchers in the field, and forecast the evolution of metaheuristics to include real-life uncertainty conditions into the optimization problems being considered.

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KIZYS_2016_cright_CS_A_Survey_on_Financial_Applications_of_Metaheuristics - Accepted Manuscript
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More information

Accepted/In Press date: 5 December 2016
e-pub ahead of print date: 13 April 2017
Published date: April 2017
Keywords: Metaheuristics, Finance, Combinatorial optimization

Identifiers

Local EPrints ID: 434025
URI: http://eprints.soton.ac.uk/id/eprint/434025
ISSN: 0360-0300
PURE UUID: ad205210-4585-46a2-8417-d73134555c1d
ORCID for Renatas Kizys: ORCID iD orcid.org/0000-0001-9104-1809

Catalogue record

Date deposited: 11 Sep 2019 16:30
Last modified: 16 Mar 2024 04:41

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Contributors

Author: Amparo Soler-Dominguez
Author: Angel A. Juan
Author: Renatas Kizys ORCID iD

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