Outlier-Resistant Models for Doubly Stochastic Point Processes

File(s)
Date
2019-05-01Author
Elsaesser, Leo Stephan
Department
Mathematics
Advisor(s)
Daniel Gervini
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Show full item recordAbstract
This thesis proposes an outlier-resistant multiplicative component model for doubly stochastic point processes. The model is based on a principal component decomposition of the log-intensity functions, using heavy-tailed t-distributions for the component scores. As an example of application, the temporal distribution of bike check-out times in the Divvy bike sharing system of Chicago is analyzed using the t-model.
Permanent Link
http://digital.library.wisc.edu/1793/92093Type
thesis