Found 6 relevant results in 2.65s where lecturer="Fabio Sigrist"

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401-0102-00L 2020S , 2021S , 2022S , 2023S , 2024S , 2025S , 2026S 5 Credits BSC , MSC , WBZ D-USYS , D-MATH , D-BIOL , D-INFK , D-ITET

Multivariate statistics analyzes data on several random variables simultaneously. This course introduces the basic concepts and provides an overview of classical and modern methods of multivariate statistics including visualization, dimension reduction, supervised and unsupervised learning for multivariate data.

2020S
2021S
2022S
2023S
2024S
2025S
401-3628-14L 2021W , 2023W , 2025W , 2026W 4 Credits BSC , DR , MSC , WBZ D-INFK , D-MATH , D-PHYS , D-ITET

Introduction to the Bayesian approach to statistics: decision theory, prior distributions, hierarchical Bayes models, empirical Bayes, Bayesian tests and model selection, empirical Bayes, Laplace approximation, Monte Carlo and Markov chain Monte Carlo methods.

2021W
2023W
2025W
401-3628-DRL 2023W 2 Credits DR D-MATH

Introduction to the Bayesian approach to statistics: decision theory, prior distributions, hierarchical Bayes models, empirical Bayes, Bayesian tests and model selection, empirical Bayes, Laplace approximation, Monte Carlo and Markov chain Monte Carlo methods.

401-4620-00L 2020S , 2021S , 2022S , 2023S , 2024S , 2025S , 2026S 6 Credits MSC D-MATH

"Statistics Lab" is an Applied Statistics Workshop in Data Analysis. It provides a learning environment in a realistic setting.Students lead a regular consulting session at the Seminar für Statistik (SfS). After the session, the statistical data analysis is carried out and a written report and results are presented to the client. The project is also presented in the course's seminar.

2020S
2021S
2022S
2023S
2024S
2025S
401-3612-00L 2006S , 2007W , 2008W , 2020W , 2022W , 2024W 5 Credits DR , MSC , WBZ D-ITET , D-MATH , D-INFK

This course provides an introduction to statistical Monte Carlo methods. This includes applications of simulations in various fields (Bayesian statistics, statistical mechanics, operations research, financial mathematics), algorithms for the generation of random variables (accept-reject, importance sampling), estimating the precision, variance reduction, introduction to Markov chain Monte Carlo.

2006S
2007W
2008W
2020W
2022W
401-3612-DRL 2022W 2 Credits DR D-MATH

This course provides an introduction to statistical Monte Carlo methods. This includes applications of simulations in various fields (Bayesian statistics, statistical mechanics, operations research, financial mathematics), algorithms for the generation of random variables (accept-reject, importance sampling), estimating the precision, variance reduction, introduction to Markov chain Monte Carlo.