Bivariate Survival and Time Series Analysis: New Regression Approaches and Applications
Sun 09.02 10:30 - 11:30
- Faculty Seminar
-
Bloomfield 527
My research integrates the development of new statistical methodologies and
theory with real-world applications, aiming to address complex statistical
questions arising from complicated data sets. Much of my current and past
work has centered on time-to-event (survival) data and time series data,
where unique challenges demand specialized approaches. In this talk, I will
present two recent projects: (1) regression modeling of bivariate survival data,
and (2) quantifying the effect size of an intervention in an interrupted time
series analysis. For the first project, I developed bivariate extensions of
established univariate survival regression models and generalized the
pseudo-observations approach to estimate regression parameters within
these models. This work addresses key challenges such as censored
observations and dependencies between event times. In the second project, I
combined ideas from causal inference with time series regression models and
quantified the effect size of an intervention in the absence of a control group.
This approach tackles challenges specific to time series data, such as
autocorrelation, long-term trends, and seasonal patterns. A significant
application of this work involved estimating the impact of the COVID-19
pandemic on various public health outcomes.