English

Forecasting Financial Market Structure from Network Features using Machine Learning

Computational Finance 2021-10-25 v1 Machine Learning Social and Information Networks Portfolio Management

Abstract

We propose a model that forecasts market correlation structure from link- and node-based financial network features using machine learning. For such, market structure is modeled as a dynamic asset network by quantifying time-dependent co-movement of asset price returns across company constituents of major global market indices. We provide empirical evidence using three different network filtering methods to estimate market structure, namely Dynamic Asset Graph (DAG), Dynamic Minimal Spanning Tree (DMST) and Dynamic Threshold Networks (DTN). Experimental results show that the proposed model can forecast market structure with high predictive performance with up to 40%40\% improvement over a time-invariant correlation-based benchmark. Non-pair-wise correlation features showed to be important compared to traditionally used pair-wise correlation measures for all markets studied, particularly in the long-term forecasting of stock market structure. Evidence is provided for stock constituents of the DAX30, EUROSTOXX50, FTSE100, HANGSENG50, NASDAQ100 and NIFTY50 market indices. Findings can be useful to improve portfolio selection and risk management methods, which commonly rely on a backward-looking covariance matrix to estimate portfolio risk.

Keywords

Cite

@article{arxiv.2110.11751,
  title  = {Forecasting Financial Market Structure from Network Features using Machine Learning},
  author = {Douglas Castilho and Tharsis T. P. Souza and Soong Moon Kang and João Gama and André C. P. L. F. de Carvalho},
  journal= {arXiv preprint arXiv:2110.11751},
  year   = {2021}
}

Comments

22 pages, 13 figures

R2 v1 2026-06-24T07:06:15.929Z