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arXiv:2201.08283 [stat.ML]AbstractReferencesReviewsResources

Lead-lag detection and network clustering for multivariate time series with an application to the US equity market

Stefanos Bennett, Mihai Cucuringu, Gesine Reinert

Published 2022-01-20Version 1

In multivariate time series systems, it has been observed that certain groups of variables partially lead the evolution of the system, while other variables follow this evolution with a time delay; the result is a lead-lag structure amongst the time series variables. In this paper, we propose a method for the detection of lead-lag clusters of time series in multivariate systems. We demonstrate that the web of pairwise lead-lag relationships between time series can be helpfully construed as a directed network, for which there exist suitable algorithms for the detection of pairs of lead-lag clusters with high pairwise imbalance. Within our framework, we consider a number of choices for the pairwise lead-lag metric and directed network clustering components. Our framework is validated on both a synthetic generative model for multivariate lead-lag time series systems and daily real-world US equity prices data. We showcase that our method is able to detect statistically significant lead-lag clusters in the US equity market. We study the nature of these clusters in the context of the empirical finance literature on lead-lag relations and demonstrate how these can be used for the construction of predictive financial signals.

Comments: 29 pages, 28 figures; preliminary version appeared at KDD 2021 - 7th SIGKKDD Workshop on Mining and Learning from Time Series (MiLeTS)
Categories: stat.ML, cs.LG, q-fin.ST, stat.ME
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