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A Deep Learning-Aided Approach to Portfolio Design for Financial Index Tracking

机译:对金融指数跟踪的投资组合设计深入学习辅助方法

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摘要

This paper considers the index tracking portfolio (ITP) design problem in financial markets, which aims at reproducing the performance of a financial index by investing in a subset of the assets constituting it. From a regression-based point of view, the ITP design problem is formulated as a mixed-integer programming (MIP). Leveraging the graph convolutional network (GCN), a calibrated GCN is proposed for asset selection followed by a lightweight MIP problem to realize asset allocation. Numerical simulations show that compared to existing methods the proposed learning-aided approach can generate comparable ITP design results and significantly accelerate the computation which is favorable for practical index tracking targets in finance.
机译:本文考虑了金融市场中的索引跟踪组合(ITP)设计问题,旨在通过投资构成它的资产的子集进行金融指数的表现。 从基于回归的角度来看,ITP设计问题被制定为混合整数编程(MIP)。 利用图形卷积网络(GCN),提出了一种校准的GCN,用于资产选择,然后是轻量级MIP问题实现资产分配。 数值模拟表明,与现有方法相比,所提出的学习辅助方法可以产生可比的ITP设计结果,并显着加速了对金融中实际指标跟踪目标有利的计算。

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