首页|基于生成对抗网络的混频资产定价研究

基于生成对抗网络的混频资产定价研究

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资产定价影响因素众多,不仅包含高频的市场信息,还包含低频企业特征信息与宏观经济信息,存在典型的混频数据观测,定价过程呈现出混频与非线性等特点。为此,结合随机贴现因子(SDF)理论与混频数据抽样(MIDAS)方法,提出了混频SDF概念,将其作为准则函数构建了生成对抗网络(GAN),解决了混频数据环境下资产定价问题。本文建立的MIDAS-SDF-GAN模型,通过MIDAS方法解决混频数据分析问题,通过深度学习揭示高维定价因子中存在的复杂非线性关系,能够直接对原始混频数据进行深度学习,运用生成对抗博弈机制,不断改进薄弱环节,提升定价能力。选取2000年1月-2020年12月期间中国A股所有上市公司作为研究样本,构建了包含48个高频市场变量、153个低频企业特征变量和11个低频宏观经济变量的混频大数据集,实证检验了MIDAS-SDF-GAN模型的性能。研究结果表明:MIDAS-SDF-GAN模型能够以数据驱动方式构造测试资产,引导模型学习定价机制,无论是在股票收益预测方面,还是在投资获利能力方面,都优于四个竞争性模型。MIDAS-SDF-GAN模型能够充分挖掘混频数据信息,通过低频企业特征信息与宏观经济信息锚定定价基础,通过高频市场信息调优定价精度,共同提升了定价效果。
Research on Mixed Frequency Asset Pricing Based on Generative Adversarial Network
Asset pricing explores the potential and latent factors that drive the prices of and returns on real and financial assets.In the big data era,asset pricing is influenced by many factors,such as high frequency market information,low frequency firm characteristic information and macroeconomic information.In this sense,typi-cal mixed frequency data issue then arises.In addition,test assets play a critical role in the process of estimating pricing kernels.However,artificially constructing test assets to examine and optimize asset pricing models can not fully identify weaknesses in model pricing.How to efficiently capture useful pricing factors from multi-source heterogeneous information and achieve accurate asset pricing is valuable to practitioners,regulators,and academic researchers alike.To this end,the concept of mixed frequency stochastic discount factor(MF-SDF)is proposed through introducing a mixed data sampling(MIDAS)approach into the stochastic discount factor(SDF)theory.MF-SDF is used as a criterion function to construct a generative adversarial network(GAN)which solves the asset pricing issue under the mixed frequency data environment.Taken together,the proposed MIDAS-SDF-GAN model is able to handle mixed frequency data via the MIDAS approach and model the complex nonlinear pattern hidden in high-dimensional pricing factors through deep learning.It can employ the generative adversarial game mechanism to construct test assets,guiding itself to learn pricing patterns and continuously improve the pricing power in a data-driven way.All Chinese A-stock listed firms from January 2000 to December 2020 are chosen as our sample data and construct a large mixed frequency dataset containing 48 high frequency market variables,153 low frequency firm characteristic variables and 11 low frequency macroeconomic variables.The data come from the CSMAR database.Then,the performance of the MIDAS-SDF-GAN model in asset pricing is empirically investigated.The results show that:1)The MIDAS-SDF-GAN model is able to construct test assets in a data-driven way and guide itself to learn the pricing mechanism.It outperforms the other four competing models in both stock return prediction and investment profitability.2)The MIDAS-SDF-GAN model is able to fully exploit information in mixed frequency data.It anchors the pric-ing basis through low frequency firm characteristic information and macroeconomic information,and optimizes the pricing accuracy through high frequency market information.These two types of information work together to improve the pricing effect.The study is an example of applying deep learning methods to the field of asset pricing.It is of great significance to solve the problems encountered in the process of asset pricing with the help of advanced artificial intelligence technology under the framework of financial theory.

asset pricingstochastic discount factormixed data sampling(MIDAS)generative adversarial network(GAN)test assets

许启发、王泽舟、蒋翠侠

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合肥工业大学管理学院,安徽 合肥 230009

合肥工业大学过程优化与智能决策教育部重点实验室,安徽 合肥 230009

资产定价 随机贴现因子 混频数据抽样 生成对抗网络 测试资产

2024

中国管理科学
中国优选法统筹法与经济数学研究会 中科院科技政策与管理科学研究所

中国管理科学

CSTPCDCSSCICHSSCD北大核心
影响因子:1.938
ISSN:1003-207X
年,卷(期):2024.32(11)