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A Cooperative Coevolutionary Stock Trading Model Using Genetic Network Programming-Sarsa

机译:基于遗传网络程序设计的合作式协同进化股票交易模型

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This paper presents a cooperative coevolutionary approach for stock trading model using Genetic Network Programming-Sarsa called CCGNP-Sarsa. Although theoretically, a single algorithm with sufficient size could solve any problem, in practice the stock market problem is too large and too complex to construct the appropriate algorithm to solve it. For such problems, cooperative coevolution which simultaneously evolves several species with the sum of their fitness values has been proposed as a successful alternative and was applied to make the stock trading models an integrated one. Such an approach allows different species of the GNP-Sarsa model to evolve in a parallel and cooperative manner, which makes the generated model more robust, generalized and efficient for generating stock trading strategies. CCGNP-Sarsa places as few restrictions as possible to the structure, allowing the model to obtain a wide variety of architecture during the evolution and to be easily used to solve complicated problems. To confirm the effectiveness of the proposed method, the simulations are carried out and compared with other methods like GNP-Sarsa with subroutines, GNP-Sarsa and Buy&Hold method. The results shows that the stock trading models using CCGNP-Sarsa outperforms all the other methods.
机译:本文提出了一种使用遗传网络编程-Sarsa的股票交易模型的合作协进化方法,称为CCGNP-Sarsa。尽管从理论上讲,一个具有足够大小的算法可以解决任何问题,但实际上股票市场问题太大且太复杂,以至于无法构建合适的算法来解决该问题。针对此类问题,已经提出了一种协同协同进化方法,它可以同时进化出几种具有其适合度值的物种,作为一种成功的替代方法,并被用于使股票交易模型成为一个综合模型。这种方法允许不同种类的GNP-Sarsa模型以并行和协作的方式发展,这使得生成的模型对于生成股票交易策略更加健壮,通用和有效。 CCGNP-Sarsa对结构的限制尽可能少,从而使模型在演化过程中可以获得各种各样的体系结构,并且可以轻松地用于解决复杂的问题。为了确认所提方法的有效性,进行了仿真并与其他方法(例如带有子例程的GNP-Sarsa,GNP-Sarsa和Buy&Hold方法)进行了比较。结果表明,使用CCGNP-Sarsa的股票交易模型优于其他所有方法。

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