Seminars

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Statistics
Room 4192, Earth Sciences Building (2207 Main Mall)
Tue 18th August 2015
11:00am
Chiara Di Gravio and Huiting Ma (Statistics Master's Students)
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Talk by Huiting Ma (11am - 11:30am)

Title: The Impact of HCV Co-Infection on Healthcare-Related Utilization among HIV Patients in British Columbia, Canada

Abstract:  Over the past several decades, the analysis of healthcare-related count data has been increasingly recognized as an essential research topic for many researchers. There is a long history of analyzing counts data under the framework of parametric distributions for independent identically distributed random variables. Standard methodology for analysing this type of data falls under generalized linear models, which include Poisson regression models and negative binomial regression models. There are other alternative models, such as quasi-Poisson and zero-inflated models. Analysis of longitudinal count data, which contain repeated count observations for each subject over time, is often done by fitting generalized estimating equation models and generalized mixed effects models.

In this project, our main objective was to characterize the trends in healthcare utilization (i.e. the number of healthcare related visits) of HIV mono-infected individuals and HIV/hepatitis C (HCV) co-infected individuals, in British Columbia, from April 1, 1997 to March 31, 2010. We use several statistical methods for the analysis of healthcare-related cross-sectional and longitudinal count data. Understanding the healthcare burden among HIV mono-infected and HIV/HCV co-infected individuals has the potential to help stakeholders to identify and address the unique healthcare needs of these individuals. Our data analyses results show that individuals with an HIV/HCV co-infection status were at a risk of experiencing higher rates of healthcare-related visits than HIV mono-infected individuals.

Talk by Chiara Di Gravio (11:30am - 12pm)

Title: Instrumental Variables Selection: a Comparison between Regularization and Post-Regularization Methods

Abstract: Instrumental variables are commonly used in statistics, econometrics, and epidemiology for the estimation of causal effects when controlled experiments are not available. Specifically, instrumental variables estimators provide consistent parameter estimates in regression models when some of the predictors are correlated with the error term. However, the properties of these estimators are sensitive to the choice of valid instruments. Since in many applications, valid instruments come in a bigger set that includes also weak and possibly irrelevant instruments, the researcher needs to select a smaller subset of instruments that are relevant and strongly correlated with the predictors in the model.

In this project we review the instrumental variables estimators, discuss the problems related to having instruments that are either weak or possibly irrelevant instruments, and compare already existing techniques with new approaches. Simulation studies will be presented to compare the different methods.


Statistics
Room 4192, Earth Sciences Building (2207 Main Mall)
Thu 6th August 2015
11:00am
Andres Sanchez-Ordonez
A Markov Random Field Approach to Modelling Animal Habitat
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Habitat modelling presents a challenge due to the variety and the accuracy of the data available. My Master's thesis focused on applying Markov random field theory to incorporate distinct types of ecological data into a habitat model. In this talk, I provide a brief overview of the data available and both the intuition and theory for using this data for habitat modelling. Model building, parameter estimation, and results with synthetic data are presented.


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Department of Statistics

Department of Statistics, University of British Columbia
3182 Earth Sciences Building
2207 Main Mall
Vancouver, BC, Canada V6T 1Z4
Tel: 604.822.0570
Fax: 604.822.6960

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