Aproximaci\'on pr\'actica a los m\'etodos de selecci\'on de portafolios de inversi\'on
Carlos Minutti-Martinez

TL;DR
This paper reviews practical methods for portfolio selection, including mean-variance and mean-semivariance models, and discusses their implementation using genetic algorithms considering transaction costs and constraints.
Contribution
Introduces a practical approach to portfolio optimization by combining traditional models with genetic algorithms and accounting for real-world constraints.
Findings
Effective use of genetic algorithms for portfolio optimization.
Inclusion of transaction costs and integer constraints.
Comparison of mean-variance and mean-semivariance models.
Abstract
This paper explores the practical approach to portfolio selection methods for investments. The study delves into portfolio theory, discussing concepts such as expected return, variance, asset correlation, and opportunity sets. It also presents the efficient frontier and its application in the Markowitz model, which employs mean-variance optimization techniques. An alternative approach based on the mean-semivariance model is introduced. This model accounts for the skewness and kurtosis of the asset return distribution, providing a more comprehensive view of risk and return. The study also addresses the practical implementation of these models, including the use of genetic algorithms to optimize portfolio selection. Additionally, transaction costs and integer constraints in portfolio optimization are considered, demonstrating the applicability of the Markowitz model. -- Este documento…
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Taxonomy
TopicsHigher Education Teaching and Evaluation
