Design of Portfolio using Multivariate Analysis

Authors

  • Dr. S. V. Ramana Rao

  • Nagendra Marisetty

  • B. Lohith Kumar

Keywords:

diversification co-movements, factor analysis, portfolio

Abstract

Stock markets are considered a barometer of the respective country s economy around the world Modern portfolio theory advocates diversification for risk management which helps maintain returns as long as indices around the world are not perfectly correlated The relationship exists across markets as a result co-movement has drawn the attention of individual investors and portfolio managers for the construction of their portfolios to maximize returns for a given level of risk The study of co-movements provides inputs for portfolio construction and facilitates the identification of markets where indices may move in the same direction or the opposite direction and the country s stock markets that are not correlated A review of the literature revealed that statistical tools like Correlation Factor analysis and Granger causality test etc are some of the tools that can be used to understand co-movements of markets Alan harper et al 2012 study used principle component analysis and inferred that Indian stock returns are aligned with its trading partners and concluded that maximizing the investors returns by reducing the risk Tak Kee Hui concluded that factor analysis provides inputs for selecting foreign markets for risk diversification This study examines the potential for diversification using 22 world stock market indices using multivariate analysis

How to Cite

Dr. S. V. Ramana Rao, Nagendra Marisetty, & B. Lohith Kumar. (2021). Design of Portfolio using Multivariate Analysis. Global Journal of Science Frontier Research, 21(A12), 13–22. Retrieved from https://journalofscience.org/index.php/GJSFR/article/view/3502

Design of Portfolio using Multivariate Analysis

Published

2021-10-15