Linköping, Örebro, Jönköping, Lund, Stockholm, Umeå, Uppsala, Linné

Causal inference in register studies

In this course we introduce causal inference with main focus on two approaches; i) the potential outcome framework/ Rubin Causal Model and ii) Causal inference with graphical models.
Identification of causal effects in the two approaches is studied. Non and semi-parametric estimators of causal effects commonly associated with the potential outcome framework will be presented. A general  introduction to graphical models is also given.

Weeks 45-03, 50% tempo http://www.usbe.umu.se/english/dept/stat/education/courses/course/?code=...



Course Data
University: 
Umeå
Offered: 
2012:2
Level: 
Master
Level: 
PhD
Credits (ECTS): 
7.5
Type of schedule: 
Regular schedule

Bayesian Learning

The course introduces basic concepts, ideas and methods of Bayesian inference. It is coordinated with a second-year master's course in the programme 'Statistics and Data Mining', and the focus with be on models and methods in the field of data mining and machine learning, but most of the course content is of general statistical interest. The course will be in English and will be given in the period October 30 - December 6, 2012.
Course Data
University: 
Linköping
Offered: 
2012:2
Level: 
Master
Level: 
PhD
Credits (ECTS): 
6.0
Type of schedule: 
Travel friendly schedule

Asymptotic Theory, Uppsala 2012

Starting November 5, I will give a course in asymptotic theory at the PhD level in Statistics. The course book is Ferguson, T.S. A Course in Large Sample Theory, Chapman and Hall 1996. Lectures are at 10.15-14 on Mondays, ending December 17. Examination is through take home exercises. For further information, see the attached schedule.
Course Data
University: 
Uppsala
Offered: 
2012:2
Level: 
PhD
Credits (ECTS): 
7.5
Type of schedule: 
Regular schedule

Multivariate Analysis

Course Data
University: 
Uppsala
Offered: 
2012:1
Level: 
PhD
Credits (ECTS): 
15.0
Type of schedule: 
Regular schedule

Categorical Data Analysis

 
Course Data
University: 
Linné
Offered: 
2012:2
Level: 
PhD
Credits (ECTS): 
7.5
Type of schedule: 
Travel friendly schedule

Spatial Statistics (Winter Conference)

Course content

Introduction to spatial data analysis, representing space, interfacing geographical information systems, space-time data, spatial statistics overview (point patterns, geostatistics, areal data). Use of GIS and spatial statistics for radioecological modeling and mapping using Chernobyl- and Fukushima-related data, focusing on public health protection.
Course Data
University: 
Örebro
Offered: 
2012:1
Level: 
PhD
Credits (ECTS): 
3.0
Type of schedule: 
Travel friendly schedule

Advanced Probability and Inference

Content

  • Mathematical background (limits, series, order relations and rates of convergence, continuity, sets)
  • Measure theoretic foundations of probability (probability triplets, random variables, independence, expected values, change of variable)
  • Stochastic convergence (almost sure convergence, convergence in probability, convergence in distribution, laws of large numbers, central limit theorems, non-iid stochastic variables)
  • Conditional probability and expectation
  • Statistical tests (size and critical values, power, efficiency, asy
Course Data
University: 
Örebro
Offered: 
2012:1
Level: 
PhD
Credits (ECTS): 
12.0
Type of schedule: 
Travel friendly schedule

Multi Level modelling

The aim of the course is to give the students basic knowledge in multilevel modelling from both theoretical as well as practical side. The course is designed to help doctoral students in their empirical analysis with multi-level data. The course will provide an up-to-date overview on the most commonly used
Course Data
University: 
Jönköping
Offered: 
2012:1
Level: 
PhD
Credits (ECTS): 
7.5
Type of schedule: 
Schedule to be decided

Incomplete data: semi-parametric and Bayesian methods (Winter Conference)

Incomplete data is a common phenomenon in longitudinal studies based on surveys and/or population registers. In such studies individuals are followed through time and data may be incomplete due, e.g., to drop out/attrition (individuals intentionally leave the study, individuals leave the study because they move or die, etc.) and censoring (due to end of study, death, etc). Incomplete data may also arise due to selection mechanisms, for instance, in meta-analyses (publication bias) and causal inference in observational studies.
Course Data
University: 
Umeå
Offered: 
2011:1
Level: 
PhD
Credits (ECTS): 
3.0
Type of schedule: 
Travel friendly schedule

Multi level analysis

COURSE SYLLABUS Multi level analysis

Course Data
University: 
Linné
Offered: 
2010:2
Level: 
PhD
Credits (ECTS): 
7.5
Type of schedule: 
Travel friendly schedule
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