To read this content please select one of the options below:

Investment portfolio formation via multicriteria decision aid: a Brazilian stock market study

Marcio Pereira Basilio (Department of Production Engineering, Federal Fluminense University, Niterói, Brazil)
Jéssica Galdino de Freitas (Department of Production Engineering, Federal Fluminense University, Niterói, Brazil)
Milton George Fonseca Kämpffe (Department of Production Engineering, Federal Fluminense University, Niterói, Brazil)
Ricardo Bordeaux Rego (Department of Production Engineering, Federal Fluminense University, Niterói, Brazil)

Journal of Modelling in Management

ISSN: 1746-5664

Article publication date: 14 May 2018

747

Abstract

Purpose

The purpose of this paper is to identify how multicriteria decision aid (MCDA) can assist the investment portfolios formation, increasing the reliability of decision-making.

Design/methodology/approach

To develop this paper, a simulation-based approach is used. Information about the assets traded on the spot market of the São Paulo Stock Exchange - BM&FBOVESPA was selected. They had 100 per cent participation in the 246 trading sessions carried out in 2015 and had an average number of business/day greater or equal to 1,000. The stratification resulted in the selection of 111 assets. Aiming assets evaluation, data are collected from 21 financial indicators. Subsequently, the principal component analysis (PCA) is used to reduce the mass of collected data without the loss of essential information. PROMETHEE II method is used for assets ranking; it belongs to the group of methods for MCDA. At the end of these stages, four groups of investment portfolios are created for simulation.

Findings

After the construction of portfolios, a simulation was performed with real data of the assets from January 03, 2011 to November 14, 2016. It resulted in a comparison in which it was observed that 100 per cent of portfolios showed positive returns on the investment. The result of portfolios’ group composed of assets based on the 21 financial indicators was higher than the other one formed from PCA criteria. Both of them were higher than Ibovespa result in the same period.

Research limitations/implications

As a contribution to new research, the model presents an opportunity for improvement through linear programming methodologies with the objective of optimizing the results, as the results obtained with the model were not optimized.

Practical implications

This research presents an alternative logic to the traditional one, as it seeks the reduction of investment risk based on the results of the management of the companies, reflected through their indicators. The model implies a change in how companies, financial institutions and small and medium investors choose their assets to form investment portfolios. The authors believe that the model has the potential to attract investors looking for long-term gains, such as public servants, retirees, professionals and others who seek to build heritage to overcome the adversities of the uncertain future. The model offers these investors the opportunity to choose which companies to invest in, based on established indicators in the literature, whose information is available in the market. The model systematizes the information and builds a ranking of the best companies so that the investor can make a conscious decision, thus avoiding what experts call a “herd effect”, which makes the majority of investors decide according to the oscillation of the market, thus ignoring the financial fundamentals of companies.

Originality/value

This study presents a proprietary methodology by merging the PCA tool with MCDA to build efficient investment portfolios.

Keywords

Citation

Basilio, M.P., de Freitas, J.G., Kämpffe, M.G.F. and Bordeaux Rego, R. (2018), "Investment portfolio formation via multicriteria decision aid: a Brazilian stock market study", Journal of Modelling in Management, Vol. 13 No. 2, pp. 394-417. https://doi.org/10.1108/JM2-02-2017-0021

Publisher

:

Emerald Publishing Limited

Copyright © 2018, Emerald Publishing Limited

Related articles