Exploring Financial Networks Using Quantile Regression and Granger Causality
Kara Karpman, Samriddha Lahiry, Diganta Mukherjee, and Sumanta Basu

TL;DR
This paper introduces a novel tail-based Granger causality method using quantile regression to analyze systemic risk in financial networks, providing more nuanced insights than traditional mean-based approaches.
Contribution
The paper develops a new quantile Granger causality approach that distinguishes tail-based connectivity in financial networks, enhancing systemic risk detection.
Findings
Tail-based networks detect risky periods more accurately.
Upper and lower tail networks reveal different market dynamics.
Method outperforms traditional mean-based GC in simulations.
Abstract
In the post-crisis era, financial regulators and policymakers are increasingly interested in data-driven tools to measure systemic risk and to identify systemically important firms. Granger Causality (GC) based techniques to build networks among financial firms using time series of their stock returns have received significant attention in recent years. Existing GC network methods model conditional means, and do not distinguish between connectivity in lower and upper tails of the return distribution - an aspect crucial for systemic risk analysis. We propose statistical methods that measure connectivity in the financial sector using system-wide tail-based analysis and is able to distinguish between connectivity in lower and upper tails of the return distribution. This is achieved using bivariate and multivariate GC analysis based on regular and Lasso penalized quantile regressions, an…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Ecosystem dynamics and resilience
