Deep learning for efficient frontier calculation in finance

IF 0.8 4区 经济学 Q4 BUSINESS, FINANCE Journal of Computational Finance Pub Date : 2021-01-06 DOI:10.21314/jcf.2021.017
X. Warin
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引用次数: 4

Abstract

We propose deep neural network algorithms to calculate efficient frontier in some Mean-Variance and Mean-CVaR portfolio optimization problems. We show that we are able to deal with such problems when both the dimension of the state and the dimension of the control are high. Adding some additional constraints, we compare different formulations and show that a new projected feedforward network is able to deal with some global constraints on the weights of the portfolio while outperforming classical penalization methods. All developed formulations are compared in between. Depending on the problem and its dimension, some formulations may be preferred.
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深度学习在金融领域的前沿计算
我们提出了深度神经网络算法来计算一些均值方差和均值CVaR投资组合优化问题的有效前沿。我们证明,当状态的维度和控制的维度都高时,我们能够处理这样的问题。添加一些额外的约束,我们比较了不同的公式,并表明新的投影前馈网络能够处理投资组合权重的一些全局约束,同时优于经典的惩罚方法。所有开发的配方都在两者之间进行了比较。根据问题及其规模,一些配方可能是优选的。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
8
期刊介绍: The Journal of Computational Finance is an international peer-reviewed journal dedicated to advancing knowledge in the area of financial mathematics. The journal is focused on the measurement, management and analysis of financial risk, and provides detailed insight into numerical and computational techniques in the pricing, hedging and risk management of financial instruments. The journal welcomes papers dealing with innovative computational techniques in the following areas: Numerical solutions of pricing equations: finite differences, finite elements, and spectral techniques in one and multiple dimensions. Simulation approaches in pricing and risk management: advances in Monte Carlo and quasi-Monte Carlo methodologies; new strategies for market factors simulation. Optimization techniques in hedging and risk management. Fundamental numerical analysis relevant to finance: effect of boundary treatments on accuracy; new discretization of time-series analysis. Developments in free-boundary problems in finance: alternative ways and numerical implications in American option pricing.
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