Portfolio Optimization and Model Predictive Control: A Kinetic Approach
Torsten Trimborn, Lorenzo Pareschi, Martin Frank

TL;DR
This paper develops a kinetic model of financial markets using model predictive control, revealing how wealth and stock price distributions evolve and explaining the emergence of power-laws and fat-tails in financial data.
Contribution
It introduces a novel kinetic portfolio model incorporating MPC, linking rational and bounded rational behaviors, and simultaneously modeling wealth and stock price distributions.
Findings
Wealth distribution follows a lognormal law.
Stock price distribution can be lognormal or power-law.
Stock return data exhibits fat-tail characteristics.
Abstract
In this paper, we introduce a large system of interacting financial agents in which each agent is faced with the decision of how to allocate his capital between a risky stock or a risk-less bond. The investment decision of investors, derived through an optimization, drives the stock price. The model has been inspired by the econophysical Levy-Levy-Solomon model (Economics Letters, 45). The goal of this work is to gain insights into the stock price and wealth distribution. We especially want to discover the causes for the appearance of power-laws in financial data. We follow a kinetic approach similar to (D. Maldarella, L. Pareschi, Physica A, 391) and derive the mean field limit of our microscopic agent dynamics. The novelty in our approach is that the financial agents apply model predictive control (MPC) to approximate and solve the optimization of their utility function.…
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