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Document type:
Masterarbeit
Author(s):
Tom Hochsprung
Title:
Learning sparse Gaussian graphical models with few covariance queries
Abstract:
Graphical models are useful in modelling multivariate dependencies; learning their structure based on data is a key problem. Classical methods for learning Gaussian graphical models rely on storing the entire covariance matrix, in high-dimensional settings this is often too expensive. We investigate an algorithm of Lugosi et al. (2021) that is able to learn Gaussian graphical models, in particular partial correlation graphs, in a short time using only a few entries of the covariance matrix. W...     »
Subject:
MAT Mathematik
DDC:
510 Mathematik
Supervisor:
Mathias Drton
Advisor:
Carlos Améendola Cerón
Date of acceptation:
01.10.2021
Year:
2021
Quarter:
4. Quartal
Year / month:
2021-10
Month:
Oct
Pages:
204
Language:
en
University:
Technische Universität München
Faculty:
Fakultät für Mathematik
TUM Institution:
Lehrstuhl für Mathematische Statistik
Format:
Text
 BibTeX