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CANSSI Ontario 2024 Distinguished Lecture in Statistical Sciences

This event is organized by the Ontario Regional Centre of the Canadian Statistical Sciences Institute (CANSSI Ontario).

Annual Distinguished Lecture in Statistical Sciences with Professor Susan Holmes

Free Event | All Welcome

Date: May 23
Time: 3:30-4:30 p.m. ET
Format: Hybrid Event (In-person in Toronto / Online by Zoom)
Registration Required: https://canssiontario.utoronto.ca/event/2024-dlss-susan-holmes/

Location: 10th Floor, 700 University Avenue, Toronto, ON. Please arrive early, as seating is limited.

For more information, email Esther Berzunza at esther.berzunza@utoronto.ca.

Talk Title (May 23): Statistics and Geometry for Heterogeneous Data

 Abstract: Today's challenges in immunology and microbiology center around the quantification of uncertainty and the design of experiments for heterogeneous multimodal data. We often have tens of thousands of features and only a few hundred samples. We need to create embeddings for graphs, trees and other non Euclidean objects. Using the sample/feature duality in the data can often provide effective low dimensional representations. However some of the nonlinearities in the underlying factors and non-uniformity in the sampling pose extra challenges. Using local methods inspired by differential geometry, special maps and transformations can enable us to construct accompanying uncertainty contours even for data on curved manifolds. This talk gives examples where we have built software and geometrical tools that provide consensus spaces where we can build the uncertainty maps that we need when designing follow-up experiments. This contains joint work with my past lab members: Lan Huong Nguyen, Elisabeth Purdom, Christof Seiler, Nina Miolane, Claire Donnat, Kris Sankaran and Laura Symul.

 

Speaker Profile: Susan Holmes has been working in non parametric multivariate statistics applied to Biology since 1985.

She started her research career in France at the INRAE institute in Montpellier. She has taught at MIT, Harvard and was an Associate Professor of Biometry at Cornell before moving to Stanford in 1998. She likes working on big messy data sets, mostly from the areas of Immunology, Cancer Biology and Microbial Ecology and her group developed the popular Bioconductor packages phyloseq and dada2 for microbiome data analyses.

Professor Holmes has co-authored an open access book with Wolfgang Huber (EMBL) published by Cambridge University Press on Modern Statistics for Modern Biology based on a popular course she teaches at Stanford. Her work is funded by the NIH and the Bill and Melinda Gates foundation. Her theoretical interests include applied probability, MCMC (Monte Carlo Markov chains), Graph Limit Theory, Differential Geometry and the topology of the space of Phylogenetic Trees.