Affiliation:
1. Department of Law, Economics, Management and Quantitative Methods University of Sannio Benevento Italy
2. Department of Economics, Management and Territory University of Foggia Foggia Italy
3. Department of Economics and Finance University of Bari Aldo Moro Bari Italy
4. Department of Statistical Sciences University La Sapienza of Rome Rome Italy
5. Department of Computer Science University of Salerno Fisciano Italy
Abstract
This article analyzes the trading strategies of five state‐of‐the‐art agents based on reinforcement learning on six commodity futures: brent oil, corn, gold, coal, natural gas, and sugar. Some of these were chosen because of the periods considered (when they became essential commodities), that is, before and after the 2022 Russia–Ukraine conflict. Agents behavior was assessed using a series of financial indicators, and the trader with the best strategy was selected. Top traders' behavior helped train our recently introduced neuro‐fuzzy agent, which adjusted its trading strategy through “herd behavior.” The results highlight how the reinforcement learning agents performed excellently and how our neuro‐fuzzy trader could improve its strategy using competitor movement information. Finally, we performed experiments with and without transaction costs, observing that, despite these costs, there are fewer transactions. Moreover, the intelligent agents' performances are outstanding and surpassed by the neuro‐fuzzy agent.
Subject
Management Science and Operations Research,General Business, Management and Accounting,Modeling and Simulation
Cited by
1 articles.
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