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Tuesday, February 19, 2019 2:00 pm - 2:00 pm EST (GMT -05:00)

**Rescheduled** Reading Group on Entropy and Counting- Jane Gao

Title: Applications of the entropy method: Counting proper colorings of a regular graph

Speaker: Jane Gao
Affiliation: University of Waterloo
Room: MC 6486

Abstract: Following Section 6 of Galvin's notes on Entropy and Counting, we will explore Galvin and Tetali’s tight upper bound

Thursday, February 28, 2019 3:30 pm - 3:30 pm EST (GMT -05:00)

Special Seminar - Yi-Shuai Niu

Title: Difference-of-SOS and Difference-of-Convex-SOS Decomposition Techniques for Polynomials

Speaker: Yi-Shuai Niu
Affiliation:

SJTU-Paristech & Maths department Shanghai Jiao Tong University

Room: MC 5501

Abstract:

We are interested in polynomial decomposition techniques for reformulating any multivariate polynomial into difference-of-sums-of-squares (DSOS) and difference-of-convex-sums-of-squares (DCSOS) polynomials.

Wednesday, March 6, 2019 3:30 pm - 3:30 pm EST (GMT -05:00)

Graph and Matroids Seminar- Anton Bernshteyn

Title: Free subshifts and the Local Lemma

Speaker: Anton Bernshteyn
Affiliation: Carnegie Mellon University
Room: MC 5501

Abstract: The purpose of this talk is to demonstrate how combinatorial tools and techniques can be used to tackle problems in other areas of mathematics, specifically,

Thursday, March 7, 2019 4:00 pm - 4:00 pm EST (GMT -05:00)

Continuous Optimization Seminar- Courtney Paquette

Title: Introduction to high-dimensional probability: some basic concentration inequalities and useful distributions

Speaker: Courtney Paquette
Affiliation: University of Waterloo
Room: MC 5417

Abstract: In this seminar, we introduce important tools from high-dimensional probability useful in studying applications in data science such as covariance estimation, matrix completion,