This week we
welcome Thomas Berrett from University of Warwick to give a talk in our
OxCSML seminar. Please find below the details.
Rebecca, Saif, and Hai-Dang.
Speaker: Thomas Berrett (Associate Professor, University of Warwick)
Time and date: 2pm-3pm Friday 1 March
Place: Room LG.03 (Small Lecture Theatre), Department of Statistics
Zoom:
https://zoom.us/j/96864871130?pwd=Q09mcmJhdGp5QlNKOUwxRG80MEhvQT09Title: Nonparametric tests of Missing Completely At Random
Abstract:
One
of the most commonly encountered discrepancies between real data sets
and models hypothesised in theoretical work is that of missing data.
When faced with incomplete data, the primary concern is to understand
the relationship between the data-generating and missingness mechanisms.
In the ideal situation, these two sources of randomness are
independent, a setting known as Missing Completely At Random (MCAR), but
this is often too restrictive in practice. In this talk I will discuss
hypothesis tests of the MCAR assumption with material based on joint
work with Richard Samworth (
https://arxiv.org/abs/2205.08627) and Alberto Bordino (
https://arxiv.org/abs/2401.05256).
It
turns out that there are deep connections between this problem and
ideas from copula theory and convex optimisation. Our methods in the
first work are based on using linear programming to test the
compatibility of distributions. In the second we draw connections with
the matrix completion literature and thus develop tests based on
semidefinite programming. In both cases our methods are more widely
applicable than existing methods and, in cases that existing methods are
applicable, we see strong empirical performance with comparable power.