How to do big portfolio selection is very important but challenging for both researchers and practitioners. In this paper, we propose a new graph-based conditional moments (GRACE) method to do portfolio selection based on thousands of stocks or more. The GRACE method first learns the conditional quantiles and mean of stock returns via a factor-augmented temporal graph convolutional network, which guides the learning procedure through a factor-hypergraph built by the set of stock-to-stock relations from the domain knowledge as well as the set of factor-to-stock relations from the asset pricing knowledge. Next, the GRACE method learns the conditional variance, skewness, and kurtosis of stock returns from the learned conditional quantiles by using the quantiled conditional moment (QCM) method. The QCM method is a supervised learning procedure to learn these conditional higher-order moments, so it largely overcomes the computational difficulty from the classical high-dimensional GARCH-type methods. Moreover, the QCM method allows the mis-specification in modeling conditional quantiles to some extent, due to its regression-based nature. Finally, the GRACE method uses the learned conditional mean, variance, skewness, and kurtosis to construct several performance measures, which are criteria to sort the stocks to proceed the portfolio selection in the well-known 10-decile framework. An application to NASDAQ and NYSE stock markets shows that the GRACE method performs much better than its competitors, particularly when the performance measures are comprised of conditional variance, skewness, and kurtosis.
翻译:如何选择大型投资组合非常重要,但对于研究人员和从业者来说都具有挑战性。 在本文中,我们提出了一个新的基于图表的有条件时刻(GRACE)方法(GRACE)方法(GRACE)方法(GRACE)方法(GRACE)来根据数千种库存或更多库存来选择投资组合。GRACE方法首先通过一个因子放大时间图组合网络来学习有条件的孔径和股票回报的平均值。QRCH类领域知识和资产定价知识中的一系列因子-高度关系所建立的因子-高度关系来指导学习程序。此外,GRACE方法(GRACE)方法(GRACE)从所学的有条件差异、偏差、偏差和稳妥的股票回报方法(GRACEE)中学习有条件的孔径差、偏差和质变。 QICM方法(QRCE)方法(QRACE)用来指导学习这些条件较高的高档时的学习过程, 也就是基于货币联盟选择证券组合的计算法(MRACE), 方法(MICEDE) 方法(QRACE) 方法(QRACE) 和最优度(SL) 方法(SL) 。