基于图的条件矩法的大组合选择

IF 2.1 2区 经济学 Q2 BUSINESS, FINANCE Journal of Empirical Finance Pub Date : 2024-08-13 DOI:10.1016/j.jempfin.2024.101533
Zhoufan Zhu , Ningning Zhang , Ke Zhu
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引用次数: 0

摘要

本文提出了一种新的基于图的条件矩(GRACE)方法,用于在数千只甚至更多股票的基础上进行投资组合选择。GRACE 方法首先通过因子增强时序图卷积网络学习股票收益率的条件数量级和均值,该网络由股票与股票的关系集以及因子与股票的关系集引导。接下来,GRACE 方法通过量化条件矩法从学习到的条件量化值中学习股票收益率的条件方差、偏斜度和峰度。最后,GRACE 方法利用学习到的条件均值、方差、偏斜度和峰度来构建多个性能指标,并以此为标准对股票进行排序,从而在著名的 10 分位数框架内进行投资组合选择。对纳斯达克和纽约证券交易所股票市场的应用表明,GRACE 方法的性能远远优于其竞争对手,尤其是当性能指标由条件方差、偏斜度和峰度组成时。
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Big portfolio selection by graph-based conditional moments method

This paper proposes a new graph-based conditional moments (GRACE) method to do portfolio selection based on thousands of stocks or even more. The GRACE method first learns the conditional quantiles and mean of stock returns via a factor-augmented temporal graph convolutional network, which is guided by the set of stock-to-stock relations as well as the set of factor-to-stock relations. Next, the GRACE method learns the conditional variance, skewness, and kurtosis of stock returns from the learned conditional quantiles via the quantiled conditional moment method. 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.

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来源期刊
CiteScore
3.40
自引率
3.80%
发文量
59
期刊介绍: The Journal of Empirical Finance is a financial economics journal whose aim is to publish high quality articles in empirical finance. Empirical finance is interpreted broadly to include any type of empirical work in financial economics, financial econometrics, and also theoretical work with clear empirical implications, even when there is no empirical analysis. The Journal welcomes articles in all fields of finance, such as asset pricing, corporate finance, financial econometrics, banking, international finance, microstructure, behavioural finance, etc. The Editorial Team is willing to take risks on innovative research, controversial papers, and unusual approaches. We are also particularly interested in work produced by young scholars. The composition of the editorial board reflects such goals.
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