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Deep Direct Reinforcement Learning for Financial Signal Representation and Trading

机译:深度直接强化学习,用于财务信号表示和交易

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摘要

Can we train the computer to beat experienced traders for financial assert trading? In this paper, we try to address this challenge by introducing a recurrent deep neural network (NN) for real-time financial signal representation and trading. Our model is inspired by two biological-related learning concepts of deep learning (DL) and reinforcement learning (RL). In the framework, the DL part automatically senses the dynamic market condition for informative feature learning. Then, the RL module interacts with deep representations and makes trading decisions to accumulate the ultimate rewards in an unknown environment. The learning system is implemented in a complex NN that exhibits both the deep and recurrent structures. Hence, we propose a task-aware backpropagation through time method to cope with the gradient vanishing issue in deep training. The robustness of the neural system is verified on both the stock and the commodity future markets under broad testing conditions.
机译:我们可以训练计算机击败有经验的交易员进行财务断言交易吗?在本文中,我们尝试通过引入递归深度神经网络(NN)进行实时金融信号表示和交易来应对这一挑战。我们的模型的灵感来自深度学习(DL)和强化学习(RL)的两个与生物相关的学习概念。在该框架中,DL部分自动感测动态市场条件,以进行信息丰富的特征学习。然后,RL模块与深层表示进行交互,并做出交易决策以在未知环境中累积最终奖励。该学习系统是在复杂的NN中实现的,该NN具有深层次的结构和递归结构。因此,我们提出一种基于时间的任务感知反向传播方法,以解决深度训练中的梯度消失问题。在广泛的测试条件下,神经系统的鲁棒性已在股票和商品期货市场上得到验证。

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