16
Nov
![Teaser image to Current Research Projects in the Statistics and Econometrics Group](/images/logos/stat-colloquium.png)
Current Research Projects in the Statistics and Econometrics Group
Daniel Wilhelm, Departement of Statistics, LMU Munich
16.11.2022
4:15 pm - 5:45 pm
LMU Department of Statistics and via zoom
This talk first provides an overview of research projects in the Statistics and Econometrics Group and then discusses selected projects in more detail. Topics include identification of measurement error models, inference involving ranks, and inference for treatment effects.
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