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HYBRID FUZZY NEURAL NETWORK TO PREDICT PRICE DIRECTION IN THE GERMAN DAX-30 INDEX

机译:混合模糊神经网络预测德国DAX-30指数的价格方向

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Intraday trading rules require accurate information about the future short term market evolution. For that reason, next-day market trend prediction has attracted the attention of both academics and practitioners. This interest has increased in recent years, as different methodologies have been applied to this end. Usually, machine learning techniques are used such as artificial neural networks, support vector machines and decision trees. The input variables of most of the studies are traditional technical indicators which are used by professional traders to implement investment strategies. We analyse if these indicators have predictive power on the German DAX-30 stock index by applying a hybrid fuzzy neural network to predict the one-day ahead direction of index. We implement different models depending on whether all the indicators and oscillators are used as inputs, or if a linear combination of them obtained through a factor analysis is used instead. In order to guarantee for the robustness of the results, we train and apply the HyFIS models on randomly selected subsamples 10,000 times. The results show that the reduction of the dimension through the factorial analysis generates more profitable and less risky strategies.
机译:日内交易规则要求有关未来短期市场演变的准确信息。因此,下一天的市场趋势预测引起了学者和从业者的注意。近年来这种兴趣增加,因为在此目的上应用了不同的方法。通常,使用机器学习技术,例如人工神经网络,支持向量机和决策树。大多数研究的输入变量是专业贸易商使用的传统技术指标,以实施投资策略。如果这些指标通过应用混合模糊神经网络预测指数的一天前方方向,我们会分析德国DAX-30股指的预测电力。我们根据所有指示符和振荡器是否被用作输入,或者如果使用通过因子分析而获得的线性组合,则实现不同的模型。为了保证结果的稳健性,我们培训并在随机选择的副页上培训并应用Hyfis模型10,000次。结果表明,通过阶乘分析减少了维度,产生了更有利可图,更少的风险策略。

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