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Forex exchange rate forecasting using deep recurrent neural networks

机译:外汇汇率预测使用深复发性神经网络

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Deep learning has substantially advanced the state of the art in computer vision, natural language processing, and other fields. The paper examines the potential of deep learning for exchange rate forecasting. We systematically compare long shortterm memory networks and gated recurrent units to traditional recurrent network architectures as well as feedforward networks in terms of their directional forecasting accuracy and the profitability of trading model predictions. Empirical results indicate the suitability of deep networks for exchange rate forecasting in general but also evidence the difficulty of implementing and tuning corresponding architectures. Especially with regard to trading profit, a simpler neural network may perform as well as if not better than a more complex deep neural network.
机译:深度学习大大先进国家在计算机视觉的艺术,自然语言加工、等领域。深度学习的潜在汇率预测。短期记忆网络和封闭的复发传统的复发性网络架构以及前馈网络的方向预测的准确性和交易的盈利能力模型预测。汇率的深层网络的适用性预测还证据难以实现和调优相应的体系结构。对营业利润,一个简单的神经网络可能执行以及如果不是比一个更复杂的神经网络。

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