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A genetic programming model to generate risk-adjusted technical trading rules in stock markets

机译:用于在股票市场中生成风险调整后的技术交易规则的遗传规划模型

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摘要

Technical trading rules can be generated from historical data for decision making in stock markets. Genetic programming (GP) as an artificial intelligence technique is a valuable method to automatically generate such technical trading rules. In this paper, GP has been applied for generating risk-adjusted trading rules on individual stocks. Among many risk measures in the literature, conditional Sharpe ratio has been selected for this study because it uses conditional value at risk (CVaR) as an optimal coherent risk measure. In our proposed GP model, binary trading rules have been also extended to more realistic rules which are called trinary rules using three signals of buy, sell and no trade. Additionally we have included transaction costs, dividend and splits in our GP model for calculating more accurate returns in the generated rules. Our proposed model has been applied for 10 Iranian companies listed in Tehran Stock Exchange (TSE). The numerical results showed that our extended GP model could generate profitable trading rules in comparison with buy and hold strategy especially in the case of risk adjusted basis.
机译:可以从历史数据中生成技术交易规则,以在股票市场中进行决策。基因编程(GP)作为一种人工智能技术,是一种自动生成此类技术交易规则的有价值的方法。在本文中,GP已用于生成针对个别股票的风险调整后的交易规则。在文献中的许多风险度量中,本研究选择了条件夏普比率,因为它使用条件风险值(CVaR)作为最佳相干风险度量。在我们提出的GP模型中,二元交易规则也已扩展到更现实的规则,这些规则使用三则信号分别表示买入,卖出和无交易。此外,我们在GP模型中包含了交易成本,股息和拆分,以便在生成的规则中计算更准确的回报。我们建议的模型已应用于在德黑兰证券交易所(TSE)上市的10家伊朗公司。数值结果表明,与购买和持有策略相比,我们扩展的GP模型可以生成有利可图的交易规则,尤其是在风险调整基础上。

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