Stammdaten

Titel: Granger Causal Inference in Multivariate Hawkes Processes by Minimum Message Length
Untertitel:
Kurzfassung:

Multivariate Hawkes processes (MHPs) are versatile probabilistic tools used to model various real-life phenomena: earthquakes, operations on stock markets, neuronal activity, virus propagation and many others. In this paper, we focus on MHPs with exponential decay kernels and estimate connectivity graphs, which represent the Granger causal relations between their components. We approach this inference problem by proposing an optimization criterion and model selection algorithm based on the minimum message length (MML) principle. MML compares Granger causal models using the Occam's razor principle in the following way: even when models have a comparable goodness-of-fit to the observed data, the one generating the most concise explanation of the data is preferred. While most of the state-of-art methods using lasso-type penalization tend to overfitting in scenarios with short time horizons, the proposed MML-based method achieves high F1 scores in these settings. We conduct a numerical study comparing the proposed algorithm to other related classical and state-of-art methods, where we achieve the highest F1 scores in specific sparse graph settings. We illustrate the proposed method also on G7 sovereign bond data and obtain causal connections, which are in agreement with the expert knowledge available in the literature.

Schlagworte: Granger causal inference, multivariate Hawkes processes, minimum message length, model selection
Publikationstyp: Beitrag in Zeitschrift (Autorenschaft)
Erscheinungsdatum: 30.04.2024 (Online)
Erschienen in: Journal of Machine Learning Research
Journal of Machine Learning Research
zur Publikation
 ( )
Titel der Serie: -
Bandnummer: 25
Heftnummer: 133
Erstveröffentlichung: Ja
Version: -
Seite: S. 1 - 26

Versionen

Keine Version vorhanden
Erscheinungsdatum: 30.04.2024
ISBN (e-book): -
eISSN: -
DOI: -
Homepage: http://jmlr.org/papers/v25/23-1066.html
Open Access
  • Online verfügbar (Open Access)

Zuordnung

Organisation Adresse
Fakultät für Technische Wissenschaften
 
Institut für Statistik
Universitätsstraße 65-67
9020 Klagenfurt am Wörthersee
Österreich
   office.stat@aau.at
zur Organisation
Universitätsstraße 65-67
AT - 9020  Klagenfurt am Wörthersee

Kategorisierung

Sachgebiete
  • 101018 - Statistik
  • 101019 - Stochastik
Forschungscluster Kein Forschungscluster ausgewählt
Zitationsindex
  • Science Citation Index (SCI)
Informationen zum Zitationsindex: Master Journal List
Peer Reviewed
  • Ja
Publikationsfokus
  • Science to Science (Qualitätsindikator: I)
Klassifikationsraster der zugeordneten Organisationseinheiten:
Arbeitsgruppen Keine Arbeitsgruppe ausgewählt

Kooperationen

Organisation Adresse
University of Avignon
Frankreich
FR  
University of Vienna
Oskar-Morgenstern-Platz 1
A-1090 Vienna
Österreich - Wien
Oskar-Morgenstern-Platz 1
AT - A-1090  Vienna

Beiträge der Publikation

Keine verknüpften Publikationen vorhanden