LGMEMLJul 16, 2022

Multiscale Causal Structure Learning

arXiv:2207.07908v17 citationsh-index: 60
Originality Incremental advance
AI Analysis

This provides a tool for financial investors to manage portfolio risk from a causal perspective, though it is incremental as it builds on existing causal structure learning with multiscale analysis.

The paper tackles the problem of inferring causal structures from observed data at different time scales, introducing MS-CASTLE, a method that outperforms a single-scale version and identifies key drivers like Brazil, Canada, and Italy in global equity market risk during the COVID-19 pandemic.

The inference of causal structures from observed data plays a key role in unveiling the underlying dynamics of the system. This paper exposes a novel method, named Multiscale-Causal Structure Learning (MS-CASTLE), to estimate the structure of linear causal relationships occurring at different time scales. Differently from existing approaches, MS-CASTLE takes explicitly into account instantaneous and lagged inter-relations between multiple time series, represented at different scales, hinging on stationary wavelet transform and non-convex optimization. MS-CASTLE incorporates, as a special case, a single-scale version named SS-CASTLE, which compares favorably in terms of computational efficiency, performance and robustness with respect to the state of the art onto synthetic data. We used MS-CASTLE to study the multiscale causal structure of the risk of 15 global equity markets, during covid-19 pandemic, illustrating how MS-CASTLE can extract meaningful information thanks to its multiscale analysis, outperforming SS-CASTLE. We found that the most persistent and strongest interactions occur at mid-term time resolutions. Moreover, we identified the stock markets that drive the risk during the considered period: Brazil, Canada and Italy. The proposed approach can be exploited by financial investors who, depending to their investment horizon, can manage the risk within equity portfolios from a causal perspective.

Foundations

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