Abstract

The portfolio optimization problem generally refers to creating an investment portfolio or asset allocation that achieves an optimal balance of expected risk and return. These portfolio returns are traditionally assumed to be continuous random variables. In An Entropy-Based Approach to Portfolio Optimization, we introduced a novel non-parametric optimization method based on Shannon entropy, called return-entropy portfolio optimization (REPO), which offers a simple and fast optimization algorithm for assets with continuous returns. Here, in this paper, we would like to extend the REPO approach to the optimization problem for assets with discrete distributed returns, such as those from a Bernoulli distribution like binary options. Under a discrete probability distribution, portfolios of binary options can be viewed as repeated short-term investments with an optimal buy/sell strategy or general betting strategy. Upon the outcome of each contract, the portfolio incurs a profit (success) or loss (failure). This is similar to a series of gambling wagers. Portfolio selection under this setting can be formulated as a new optimization problem called discrete entropic portfolio optimization (DEPO). DEPO creates optimal portfolios for discrete return assets based on expected growth rate and relative entropy. We show how a portfolio of binary options provides an ideal general setting for this kind of portfolio selection. As an example we apply DEPO to a portfolio of short-term foreign exchange currency pair binary options from the NADEX exchange platform and show how it outperforms leading Kelly criterion strategies. We also provide an additional example of a gambling application using a portfolio of sports bets over the course of an NFL season and present the advantages of DEPO over competing Kelly criterion strategies.

Highlights

  • In our previous paper (Mercurio et al [1]), a new class of portfolio optimization problems was introduced called return-entropy portfolio optimization (REPO)

  • discrete entropic portfolio optimization (DEPO) introduces a robust method for evaluating the risk of binary option portfolios and gambling portfolios alike, and gives the mathematical tools to make data-driven portfolio selection decisions to mitigate risk

  • Compared to previous research in this space, DEPO is first to introduce the concept of managing the risk of binary options as an additional dimension to the optimization of binary option portfolios

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Summary

Introduction

In our previous paper (Mercurio et al [1]), a new class of portfolio optimization problems was introduced called return-entropy portfolio optimization (REPO). Entropy 2020, 22, 752 options (FROs), or even sports bets These types of discrete return instruments can be assumed to follow a Bernoulli distribution with an expected probability of success and fixed profit and loss amounts. Both kinds of investment portfolios can have risk–return choices. Allocating that same capital to an increasingly large number of binary events reduces the portfolio risk, since the expected net return will approach zero as n increases (minimum relative entropy) For this reason, the uniform distribution is the minimum risk portfolio for binary assets.

Literature Review
The Kelly Criterion
Extension of the Kelly Criterion to Multiple Wagers
Investments Versus Wagers
Joint Entropy of a Portfolio of Discrete Return Assets
Minimum Relative Entropy
Kullback–Leibler Divergence
Relative Entropy as a Convex Risk Measure
Minimum Risk Option Portfolios with Relative Entropy
Risk-Adjusted Performance
FOREX Binary Option Portfolio Example
Efficient Frontier and Portfolio Selection
Comparison to the Kelly Criterion over Time
NFL Sportsbook Example
Conclusions
Materials and Methods
Findings
Methods

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