Expanding portfolio diversification through cluster analysis beyond traditional volatility
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Received December 9, 2024;Accepted January 15, 2025;Published January 23, 2025
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Author(s)Link to ORCID Index: https://orcid.org/0000-0002-7895-7879Link to ORCID Index: http://orcid.org/0000-0002-2331-8690Link to ORCID Index: https://orcid.org/0000-0002-1558-629XLink to ORCID Index: https://orcid.org/0000-0003-2494-1465Link to ORCID Index: https://orcid.org/0000-0003-2758-5662
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DOIhttp://dx.doi.org/10.21511/imfi.22(1).2025.12
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Article InfoVolume 22 2025, Issue #1, pp. 147-159
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The study reviews the application of machine learning tools in financial investment portfolio management, focusing on cluster analysis for asset allocation, diversification, and risk optimization. The paper aims to explore the use of clustering analysis to broaden the concept of portfolio diversification beyond traditional volatility metrics. An open dataset from Yahoo Finance includes a ten-year historical period (2014–2024) of 130 actively traded securities from international stock markets used. Dataset selection prioritizes top liquidity and trading activity. Python analytical tools were employed to clean, process, and analyze the data. The methodology combines classical Markowitz optimization with clustering analysis techniques, highlighting variance-return trade-offs. Various asset characteristics, including annualized return, standard deviation, Sharpe ratio, correlation with indices, skewness, and kurtosis, were incorporated into the clustering models to reveal hidden patterns and groupings among financial assets. Results show that while clustering enhances insights into asset diversity, classical approaches remain historically superior in optimizing risk-adjusted returns. This study concludes that clustering complements, rather than replaces, classical methods by broadening the understanding of diversification and addressing many diversity factors, such as metrics of the technical, graphical, and fundamental analysis. The paper also introduces the diversity rate based on clustering, which measures the variance balance by all features within and between clusters, providing a broader perspective on diversification beyond traditional metrics. Future research should investigate dynamic clustering techniques, integrate fundamental economic indicators, and develop adaptive models for effective portfolio management in evolving financial markets.
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JEL Classification (Paper profile tab)C63, C61, D53, G11, G17
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References30
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Tables3
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Figures3
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- Figure 1. Flowchart of the research
- Figure 2. Efficient frontier and simulated portfolio risk-return trade-off
- Figure 3. Hierarchical clustering dendrogram for portfolio assets using Ward’s method
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- Table 1. Performance and diversification metrics for optimized portfolios (classical optimization method) from January 1, 2014 to December 1, 2024
- Table 2. Cluster Centroids: annualized mean and standard deviation
- Table 3. Cluster-based analysis and portfolio comparison of selected assets
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Data curation
Mykhailo Kuzheliev
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Investigation
Mykhailo Kuzheliev, Dmytro Zherlitsyn, Alina Nechyporenko
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Methodology
Mykhailo Kuzheliev, Dmytro Zherlitsyn, Ihor Rekunenko
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Project administration
Mykhailo Kuzheliev, Ihor Rekunenko
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Supervision
Mykhailo Kuzheliev
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Writing – original draft
Mykhailo Kuzheliev, Dmytro Zherlitsyn, Ihor Rekunenko
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Conceptualization
Dmytro Zherlitsyn
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Software
Dmytro Zherlitsyn, Ihor Rekunenko, Sergii Stabias
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Visualization
Dmytro Zherlitsyn, Alina Nechyporenko
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Formal Analysis
Ihor Rekunenko, Alina Nechyporenko, Sergii Stabias
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Validation
Ihor Rekunenko, Sergii Stabias
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Resources
Alina Nechyporenko, Sergii Stabias
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Writing – review & editing
Alina Nechyporenko, Sergii Stabias
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Data curation
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The macroeconomic factors affecting government bond yield in Indonesia, Malaysia, Thailand, and the Philippines
Benny Budiawan Tjandrasa , Hotlan Siagian , Ferry Jie doi: http://dx.doi.org/10.21511/imfi.17(3).2020.09Investment Management and Financial Innovations Volume 17, 2020 Issue #3 pp. 111-121 Views: 2336 Downloads: 373 TO CITE АНОТАЦІЯThe government bond (GB) has become the most attractive investment portfolio option, even though many macroeconomic factors affect the bond yield. This paper aims to investigate the determining factor of local currency government bond yield by considering the inflation rate, credit default swap, stock market index, exchange rate, and volatility index. This study used 240 data panel from the Bloomberg stock market in the form of data panel covering Southeast developing countries, namely Indonesia, Thailand, Malaysia, and the Philippines, for five years or sixty months from January 2015 to December 2019. Data analysis used recursive models and multivariate regression techniques using EViews software. The random effect model results revealed that change in the foreign exchange rate and volatility indexes affected, partially and simultaneously, the changes in the stock market index. The result also showed that changes in the stock market index, inflation rate, and credit default swap affected, partially and simultaneously, government bond yield changes. These results suggest that the government bond yield could be managed by controlling volatility index, foreign exchange rate, stock market index, inflation rates, and credit default swaps. This finding could provide an insight into the policymaker and fiscal authority on managing the risk of government bonds under control during high volatility or even making it reasonably lower. This result could contribute to the current research in the field of financial management.
Acknowledgment
It is the author’s pleasure to thank Muhammad Aulia SE MSc CSA® from the Ministry of Finance of Republic Indonesia, for his invaluable contribution to encourage this study and also to share the data required for this paper. He also delivers essential insights into improving the quality of this work. This research received no specific grant from any funding agency in the public, commercial, or not-for-profit sectors. -
Multi-agent modeling and simulation of a stock market
Mohamed Amine Souissi , Khalid Bensaid , Rachid Ellaia doi: http://dx.doi.org/10.21511/imfi.15(4).2018.10Investment Management and Financial Innovations Volume 15, 2018 Issue #4 pp. 123-134 Views: 2278 Downloads: 1138 TO CITE АНОТАЦІЯThe stock market represents complex systems where multiple agents interact. The complexity of the environment in the financial markets in general has encouraged the use of modeling by multi-agent platforms and particularly in the case of the stock market.
In this paper, an agent-based simulation model is proposed to study the behavior of the volume of market transactions. The model is based on the case of a single asset and three types of investor agents. Each investor can be a zero intelligent trader, fundamentalist trader or traders using historical information in the decision making process. The goal of the study is to simulate the behavior of a stock market according to the different considered endogenous and exogenous variables. -
Test of capital market integration using Fama-French three-factor model: empirical evidence from India
Neeraj Sehrawat , Amit Kumar , Narander Kumar Nigam , Kirtivardhan Singh , Khushi Goyal doi: http://dx.doi.org/10.21511/imfi.17(2).2020.10Investment Management and Financial Innovations Volume 17, 2020 Issue #2 pp. 113-127 Views: 1986 Downloads: 824 TO CITE АНОТАЦІЯIntegration or segmentation of markets determines whether substantial advantages in risk reduction can be attained through portfolio diversification in foreign securities. In an integrated market, investors face risk from country-specific factors and factors, which are common to all countries, but price only the later, as country-specific risk is diversifiable. The aim of this study is two-fold, firstly, investigating the superiority of the Fama-French three-factor model over Capital Asset Pricing Model (CAPM) and later using the superior model to test for integration of Indian and US equity markets (a proxy for global markets). Based on a sample of Bombay Stock Exchange 500 non-financial companies for the period 2003–2019, the data suggest the superiority of Fama-French three-factor model over CAPM. Using the Non-Linear Seemingly Unrelated Regression technique, the first half of the sample period (2003–2010) shows evidence of market segmentation; however, the second sub-period (2011–2019) shows weak signs of market integration, which is supported by the Johansen test of cointegration, suggesting that Indian market is gradually getting integrated with global markets.