Share buybacks: a theoretical exploration of genetic algorithms and mathematical optionality
Version
Published
Date Issued
2023
Author(s)
Type
Article
Language
English
Abstract
This article exclusively formulates and presents three innovative hypotheses related to the execution of share buybacks, employing Genetic Algorithms (GAs) and mathematical optimization techniques. Drawing on the foundational contributions of scholars such as Osterrieder, Seigne, Masters, and Guéant, we articulate hypotheses that aim to bring a fresh perspective to share buyback strategies. The first hypothesis examines the potential of GAs to mimic trading schedules, the second posits the optimization of buyback execution as a mathematical problem, and the third underlines the role of optionality in improving performance. These hypotheses do not only offer theoretical insights but also set the stage for empirical examination and practical application, contributing to broader financial innovation. The article does not contain new data or extensive reviews but focuses purely on presenting these original, untested hypotheses, sparking intrigue for future research and exploration.
JEL Classification: G00.
JEL Classification: G00.
Subjects
HG Finance
Publisher DOI
Journal
Frontiers in Artificial Intelligence
ISSN
2624-8212
Organization
Sponsors
Swiss National Science Foundation
European Cooperation in Science and Technology
Volume
6
Publisher
Frontiers Research Foundation
Submitter
Liu, Yiting
Citation apa
Osterrieder, J. R. (2023). Share buybacks: a theoretical exploration of genetic algorithms and mathematical optionality. In Frontiers in Artificial Intelligence (Vol. 6). Frontiers Research Foundation. https://doi.org/10.24451/arbor.20560
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