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An Improved Fuzzy Rule-Based Automated Trading Agent

机译:一种改进的基于模糊规则的自动交易代理

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In this paper an improved Fuzzy Rule-Based Trading Agent is presented. The proposal consists in adding machine-learning-based methods to improve the overall performance of an automated agent that trades in futures markets. The modified Fuzzy Rule-Based Trading Agent has to decide whether to buy or sell goods, based on the spot and futures time series, gaining a profit from the price speculation. The proposal consists first in changing the membership functions of the fuzzy inference model (gaussian and sigmoidal, instead of triangular and trapezoidal). Then using the NFAR (Neuro-Fuzzy Autorregresive) model the relevant lags of the time series are detected, and finally a fuzzy inference system (Self-Organizing Neuro-Fuzzy Inference System) is implemented to aid the decision making process of the agent. Experimental results demonstrate that with the addition of these techniques, the improved agent considerably outperforms the original one.
机译:本文提出了一种改进的模糊规则的交易代理。该提案包括添加基于机器学习的方法,以改善期货市场交易的自动化代理的整体性能。基于修改的模糊规则的交易代理必须决定是否根据现货和期货时间序列购买或销售商品,从价格炒作中获得利润。该提案首先在改变模糊推理模型的成员函数(高斯和乙状物质,而不是三角形和梯形)的内容中组成。然后使用NFAR(神经模糊自测性)模型检测时间序列的相关滞后,最后实现了模糊推理系统(自组织神经模糊推理系统)以帮助代理的决策过程。实验结果表明,随着这些技术的增加,改进剂会显着优于原始的代理。

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