Abstract

The financial market is a complex system in which the assets influence each other, causing, among other factors, price interactions and co-movement of returns. Using the Maximum Entropy Principle approach, we analyze the interactions between a selected set of stock assets and equity indices under different high and low return volatility episodes at the 2008 Subprime Crisis and the 2020 COVID-19 outbreak. We carry out an inference process to identify the interactions, in which we implement the a pairwise Ising distribution model describing the first and second moments of the distribution of the discretized returns of each asset. Our results indicate that second-order interactions explain more than 80% of the entropy in the system during the Subprime Crisis and slightly higher than 50% during the COVID-19 outbreak independently of the period of high or low volatility analyzed. The evidence shows that during these periods, slight changes in the second-order interactions are enough to induce large changes in assets correlations but the proportion of positive and negative interactions remains virtually unchanged. Although some interactions change signs, the proportion of these changes are the same period to period, which keeps the system in a ferromagnetic state. These results are similar even when analyzing triadic structures in the signed network of couplings.

Highlights

  • It is possible to gain a deeper understanding of the behavior of financial markets under turmoil episodes analyzing markets interactions that let to describe the relationships between different sets of financial assets

  • The main contribution of this study is the analysis of the stock market using a pairwise model in two financial distress episodes of very different nature

  • Using a maximum entropy approach, it is possible to describe the amount of information due to second-order interactions for the Subprime crisis and COVID-19 outbreak, in different periods well distinguished by their level of volatility

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Summary

Introduction

Received: 12 September 2021Accepted: 1 October 2021Published: 5 October 2021Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.Licensee MDPI, Basel, Switzerland.Attribution (CC BY) license (https://creativecommons.org/licenses/by/ 4.0/).The fluctuation of market asset prices are a good example of unpredictable time series and random processes, subject to complex interactions of a multitude of elements in a complex system under nonlinear dynamics [1]. Modeling equity market behavior without imposing assumptions on the dynamics and trading rules that govern it offers the opportunity to study this system as a set of stocks interacting with non-trivial rules. The Maximum

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