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Aktuelle Version vom 14. Januar 2022, 12:44 Uhr

Termin (Alle Termine)
Datum Freitag, 21. Januar 2022
Uhrzeit 11:30 – 11:50 Uhr (Dauer: 20 min)
Ort
Webkonferenz https://kit-lecture.zoom.us/j/67744231815
Vorheriger Termin Fr 14. Januar 2022
Nächster Termin Fr 21. Januar 2022

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Vorträge

Vortragende(r) Tobias Hombücher
Titel Canonical Monte Carlo Dependency Estimation
Vortragstyp Proposal
Betreuer(in) Edouard Fouché
Vortragsmodus
Kurzfassung Dependency estimation is a crucial task in data analysis and finds applications in, e.g., data understanding, feature selection and clustering. This thesis focuses on Canonical Dependency Analysis, i.e., the task of estimating the dependency between two random vectors, each consisting of an arbitrary amount of random variables. This task is particularly difficult when (1) the dimensionality of those vectors is high, and (2) the dependency is non-linear. We propose Canonical Monte Carlo Dependency Estimation (cMCDE), an extension of Monte Carlo Dependency Estimation (MCDE, Fouché 2019) to solve this task. Using Monte Carlo simulations, cMCDE estimates dependency based on the average discrepancy between empirical conditional distributions. We show that cMCDE inherits the useful properties of MCDE and compare it to existing competitors. We also propose and apply a method to leverage cMCDE for selecting features from very high-dimensional features spaces, demonstrating cMCDE’s practical relevance.
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