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Chemical reaction optimisation: a hybrid technique applied to functional link artificial neural networks with least mean square learning for foreign exchange rates forecasting

机译:化学反应优化:一种应用于功能链接人工神经网络的混合技术,具有最小均方学习功能,可预测汇率

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摘要

Forecasting foreign exchange rates has long been an important issue in international finance. Most of the standard econometric methods are unable to produce significant superior forecasts because of its built-in complexity and practical applications. Taking into consideration the worldwide financial capital market, the foreign exchange (FOREX) market has a very crucial role to play. Due to the globalisation of fiscal investment, the investors are interested to learn the co-movement of foreign exchange, so as to make their investments safe and earn profits in return. In this work, an improved ANN model is being proposed that hybridises chemical reaction optimisation with functional link artificial neural network for prediction of foreign exchange (FOREX) rate. Experimental result shows that the proposed model with least mean square (LMS) training outperforms other methods, which ultimately indicates that the proposed model can be an effective way to improve forecasting accuracy achieved by other counterparts.
机译:长期以来,汇率预测一直是国际金融中的重要问题。由于其固有的复杂性和实际应用,大多数标准计量经济学方法无法产生明显的卓越预测。考虑到全球金融资本市场,外汇(FOREX)市场扮演着非常关键的角色。由于财政投资的全球化,投资者有兴趣学习外汇的共同运动,以使他们的投资安全并赚取利润。在这项工作中,正在提出一种改进的ANN模型,该模型将化学反应优化与功能链接人工神经网络混合,以预测外汇(FOREX)汇率。实验结果表明,所提出的具有最小均方(LMS)训练的模型优于其他方法,这最终表明所提出的模型是提高其他对等方的预测准确性的有效途径。

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