Alexander Kreiß

Alexander Kreiß
Leipzig University · Institute of Mathematics

Dr.

About

12
Publications
252
Reads
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21
Citations
Introduction
My research interest lie in general in the asymptotic analysis of non-parametric models. In particular I'm interested in the statistical analysis of network (interaction) models. Moreover, I'm working on non-parametric models with measurement error and regression discontinuity models.
Additional affiliations
July 2021 - March 2022
London School of Economics and Political Science
Position
  • Research Officer
February 2020 - June 2021
KU Leuven
Position
  • PostDoc Position
October 2018 - January 2020
University of Mannheim
Position
  • Academic Employee

Publications

Publications (12)
Article
We study regression discontinuity designs in which many predetermined covariates, possibly much more than the number of observations, can be used to increase the precision of treatment effect estimates. We consider a two-step estimator which first selects a small number of “important” covariates through a localized Lasso-type procedure, and then, i...
Article
Full-text available
In epidemics many interesting quantities, like the reproduction number, depend on the incubation period (time from infection to symptom onset) and/or the generation time (time until a new person is infected from another infected person). Therefore, estimation of the distribution of these two quantities is of distinct interest. However, this is a ch...
Preprint
Full-text available
We study regression discontinuity designs in which many covariates, possibly much more than the number of observations, are available. We provide a two-step algorithm which first selects the set of covariates to be used through a localized Lasso-type procedure, and then, in a second step, estimates the treatment effect by including the selected cov...
Preprint
In statistical network analysis it is common to observe so called interaction data. Such data is characterized by the actors who form the vertices of a network. These are able to interact with each other along the edges of the network. One usually assumes that the edges in the network are randomly formed and dissolved over the observation horizon....
Preprint
Full-text available
In epidemics many interesting quantities, like the reproduction number, depend on the incubation period (time from infection to symptom onset) and/or the generation time (time until a new person is infected from another infected person). Therefore, estimation of the distribution of these two quantities is of distinct interest. However, this is a ch...
Preprint
We will consider multivariate stochastic processes indexed either by vertices or pairs of vertices of a dynamic network. Under a dynamic network we understand a network with a fixed vertex set and an edge set which changes randomly over time. We will assume that the spatial dependence-structure of the processes is linked with the network in the fol...
Thesis
In the present thesis we are interested in modelling the behaviour of actors in a network in dependence of explanatory variables which give information about every pair of actors. The behaviour is here expressed in interactions which the actors may cast amongst each other. Our model is based on a survival analysis idea: We assume that the interacti...
Article
A flexible approach for modeling both dynamic event counting and dynamic link-based networks based on counting processes is proposed, and estimation in these models is studied. We consider nonparametric likelihood based estimation of parameter functions via kernel smoothing. The asymptotic behavior of these estimators is rigorously analyzed by allo...
Preprint
A flexible approach for modeling both dynamic event counting and dynamic link-based networks based on counting processes is proposed, and estimation in these models is studied. We consider nonparametric likelihood based estimation of parameter functions via kernel smoothing. The asymptotic behavior of these estimators is rigorously analyzed by allo...

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