NEPETRDec 19, 2019

Evolving ab initio trading strategies in heterogeneous environments

arXiv:1912.09524v11 citations
Originality Highly original
AI Analysis

This offers a practical alternative to data-driven training for developing trading strategies, potentially benefiting financial traders and researchers.

The paper tackled the problem of creating profitable trading strategies without using historical market data by evolving deep neural networks in an agent-based market simulation, and found that the resulting algorithms were consistently profitable when backtested on real high-frequency foreign exchange data.

Securities markets are quintessential complex adaptive systems in which heterogeneous agents compete in an attempt to maximize returns. Species of trading agents are also subject to evolutionary pressure as entire classes of strategies become obsolete and new classes emerge. Using an agent-based model of interacting heterogeneous agents as a flexible environment that can endogenously model many diverse market conditions, we subject deep neural networks to evolutionary pressure to create dominant trading agents. After analyzing the performance of these agents and noting the emergence of anomalous superdiffusion through the evolutionary process, we construct a method to turn high-fitness agents into trading algorithms. We backtest these trading algorithms on real high-frequency foreign exchange data, demonstrating that elite trading algorithms are consistently profitable in a variety of market conditions---even though these algorithms had never before been exposed to real financial data. These results provide evidence to suggest that developing \textit{ab initio} trading strategies by repeated simulation and evolution in a mechanistic market model may be a practical alternative to explicitly training models with past observed market data.

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