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Enhancing the momentum strategy through deep regression

机译:通过深度回归增强势头策略

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Momentum is a pervasive and persistent phenomenon in financial economics that has been found to generate abnormal returns not explainable by the traditional asset pricing models. This paper investigates some variations of the existing momentum strategies to increase profit and gain other desirable properties such as low kurtosis, small negative skewness and small maximum drawdown. We investigate these by using regression that is based on the latest techniques from deep learning such as stacked autoencoders and denoising autoencoders. Empirical results indicate that our regression-based variations can generate increased returns, and improved higher-order moments and maximum drawdown characteristics. Furthermore, our results reveal such improved performance can only be attained through the use of the latest deep learning technologies.
机译:势头是金融经济学中的普遍存在的现象,这些经济学现象被发现产生异常退货,而传统的资产定价模型无法解释。 本文调查了现有的势头策略的一些变化,以增加利润,并获得其他理想的性质,如低峰度,阴性偏振和小的最大降低。 我们通过使用基于深度学习的最新技术(如堆叠的AutoEncoders和Denoising AutoEncoders)的最新技术来调查这些问题。 经验结果表明,基于回归的变体可以产生增加的返回,并提高了更高级的瞬间和最大缩放特性。 此外,我们的结果揭示了这种改进的性能,只能通过使用最新的深度学习技术来实现。

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