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Growing Science » Accounting » A bibliometric analysis and visualization of the scientific publications on multi-period portfolio optimization: From the current status to future directions

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Accounting

ISSN 2369-7407 (Online) - ISSN 2369-7393 (Print)
Quarterly Publication
Volume 10 Issue 3 pp. 107-120 , 2024

A bibliometric analysis and visualization of the scientific publications on multi-period portfolio optimization: From the current status to future directions Pages 107-120 Right click to download the paper Download PDF

Authors: Arman Khosravi, Seyed Jafar Sadjadi, Hossein Ghanbari

DOI: 10.5267/j.ac.2024.6.001

Keywords: Multi-period portfolio optimization, Asset allocation, Web of Science, Bibliometrics

Abstract: Portfolio optimization is a widely recognized strategy for investing that involves selecting a combination of assets that offers the optimal balance between potential gains and volatility. Traditional portfolio optimization typically focuses on a single period, considering only the current market conditions. However, multi-period portfolio optimization takes a more comprehensive approach by incorporating the dynamic nature of financial markets over multiple periods. Hence in this study, we focus on multi-period portfolio optimization. We conduct a bibliometric analysis of articles on multi-period portfolio optimization in the Web of Science (WoS) database. Through quantitative methods and the utilization of the Bibliometrix R package, we analyze publication trends, key research sites, and historical output in this field. Our findings provide valuable insights into the current state of research on multi-period portfolio optimization. This bibliometric analysis contributes to the existing literature on multi-period portfolio optimization and serves as a valuable resource for researchers, policymakers, and practitioners in the field of finance.

How to cite this paper
Khosravi, A., Sadjadi, S & Ghanbari, H. (2024). A bibliometric analysis and visualization of the scientific publications on multi-period portfolio optimization: From the current status to future directions.Accounting, 10(3), 107-120.

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Journal: Accounting | Year: 2024 | Volume: 10 | Issue: 3 | Views: 1154 | Reviews: 0

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