Cryptocurrency portfolio optimization through Grey-Box Gene Pool Optimal Mixing Evolutionary Algorithms
Summary
Portfolio optimization of cryptocurrencies with Evolutionary Algorithms
is a fairly new topic in financial literature. New and upcoming studies are
addressing portfolio optimization problems through a wide array of evolutionary
and other novel algorithmic approaches. This study compares
the Gene-Pool Optimal Mixing Evolutionary Algorithm (GOMEA) with the
Genetic Algorithm and the Particle Swarm Optimization through an evaluation
of each algorithm’s capabilities for portfolio risk management. Specifically,
we use the Conditional Value at Risk (CVaR) as our risk metric for
optimization and construct an efficient frontier for the portfolios generated
to examine the performance of the algorithms. Making use of both simulated
and historical data, our analysis focuses on these algorithms’ capacity
to manage the intricate risk/reward trade-off inherent in cryptocurrencies.
We construct a theoretical framework that supports the assumption behind
the preference of GOMEA and conduct an empirical analysis to test whether
our assumptions hold under the two distinctive datasets. Our results suggest
that GOMEA presents an overall better performance in portfolio risk
management through its optimization approach of the cryptocurrency portfolios.
These results underscore the potential benefits of employing advanced
evolutionary algorithms that exploit the inherent interdependencies
found in cryptocurrencies.