keyboard_arrow_up
Entropy-Cost Ratio Maximization Model for Efficient Stock Portfolio Selection Using Interval Analysis

Authors

Mainak Dey1 and Rupak Bhattacharyya2, 1Camellia Institute of Engineering, India and 2Global Institute of Management & Technology, India

Abstract

This paper introduces a new stock portfolio selection model in non-stochastic environment. Following the principle of maximum entropy, a new entropy-cost ratio function is introduced as the objective function. The uncertain returns, risks and dividends of the securities are considered as interval numbers. Along with the objective function, eight different types of constraints are used in the model to convert it into a pragmatic one. Three different models have been proposed by defining the future financial market optimistically, pessimistically and in the combined form to model the portfolio selection problem. To illustrate the effectiveness and tractability of the proposed models, these are tested on a set of data from Bombay Stock Exchange (BSE). The solution has been done by genetic algorithm.

Keywords

Stock Portfolio Selection, Interval Numbers, Entropy-Cost Ratio model, Dividend, Genetic Algorithm.

Full Text  Volume 3, Number 2