Recent developments in deep learning techniques have motivated intensive research in machine learning-aided stock trading strategies. However, since the financial market has a highly non-stationary nature hindering the application of typical data-hungry machine learning methods, leveraging financial inductive biases is important to ensure better sample efficiency and robustness. In this study, we propose a novel method of constructing a portfolio based on predicting the distribution of a financial quantity called residual factors, which is known to be generally useful for hedging the risk exposure to common market factors. The key technical ingredients are twofold. First, we introduce a computationally efficient extraction method for the residual information, which can be easily combined with various prediction algorithms. Second, we propose a novel neural network architecture that allows us to incorporate widely acknowledged financial inductive biases such as amplitude invariance and time-scale invariance. We demonstrate the efficacy of our method on U.S. and Japanese stock market data. Through ablation experiments, we also verify that each individual technique contributes to improving the performance of trading strategies. We anticipate our techniques may have wide applications in various financial problems.
翻译:最近深层次学习技术的发展推动了对机械学习辅助股票交易战略的深入研究。然而,由于金融市场具有非常非固定的性质,阻碍了典型的数据饥饿机器学习方法的应用,因此利用金融诱导偏差对于确保更好的抽样效率和稳健性十分重要。在本研究中,我们提出一种新的方法,根据预测金融数量的分布来建立一个组合,称为剩余因素,众所周知,这种组合对于避免风险受到共同市场因素的影响普遍有用。关键技术成分是双重的。首先,我们为残余信息引入一种计算高效的提取方法,这种方法很容易与各种预测算法相结合。第二,我们提出一个新的神经网络结构,使我们能够纳入广泛公认的金融诱导偏差,例如变异性和时间差异性。我们展示了美国和日本股票市场数据的方法的功效。我们通过消融实验,还核实每一种技术都有助于改善贸易战略的绩效。我们预计我们的技术可能会在各种金融问题上产生广泛应用。