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On Evolving Multi-agent FX Traders

机译:不断发展的多代理外汇交易者

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摘要

Current frameworks for identifying trading agents using machine learning are able to simultaneously address the characterization of both technical indicator and decision tree. Moreover, multi-agent frameworks have also been proposed with the goal of improving the reliability and trust in the agent policy identified. Such advances need weighing against the computational overhead of assuming such flexibility. In this work a framework for evolutionary multi-agent trading is introduced and systematically benchmarked for FX currency trading; including the impact of FX trading spread. It is demonstrated that simplifications can be made to the 'base' trading agent that do not impact on the quality of solutions, but provide considerable computational speedups. The resulting evolutionary multi-agent architecture is demonstrated to provide significant benefits to the profitability and improve the reliability with which profitable policies are returned.
机译:使用机器学习来识别交易代理的当前框架能够同时解决技术指标和决策树的特征。此外,还提出了多代理框架,其目的是提高对所确定的代理策略的可靠性和信任度。这种进步需要权衡假设这种灵活性的计算开销。在这项工作中,引入了演化多主体交易的框架,并为外汇货币交易系统地设定了基准。包括外汇交易价差的影响。事实证明,可以简化“基础”交易代理程序,这不会影响解决方案的质量,但可以提供可观的计算速度。事实证明,由此产生的演化型多代理架构可为获利能力带来重大好处,并提高了返还获利政策的可靠性。

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