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Thursday, November 14, 2019 3:00 pm - 3:00 pm EST (GMT -05:00)

Algebraic Combinatorics Seminar - Nick Early

Title: From weakly separated collections to matroid subdivisions

Speaker: Nick Early
Affiliation: Perimeter Institute for Theoretical Physics
Room: MC 5417

Abstract:

We study arrangements of slightly skewed tropical hyperplanes, called blades, on the vertices of a hypersimplex $\Delta_{k,n}$.

Thursday, November 14, 2019 4:00 pm - 4:00 pm EST (GMT -05:00)

Graphs and Matroids Seminar - Shayla Redlin

Title: Halfway to Rota's Basis Conjecture

Speaker: Shayla Redlin
Affiliation: University of Waterloo
Room: MC 5501

Abstract:

Rota’s Basis Conjecture is that any rank-n matroid with n disjoint bases B_1, …, B_n has n disjoint transversal bases; a basis is transversal if it contains exactly one element from each B_i.

Friday, November 15, 2019 1:00 pm - 1:00 pm EST (GMT -05:00)

Combinatorial Optimization Reading Group - Benjamin Moore

Title: A deterministic (1/2 + epsilon)-approximation for submodular maximizztion over a matroid

Speaker: Ben Moore
Affiliation: University of Waterloo
Room: MC 5417

Abstract:

In 1978, it was shown that a natural greedy algorithm gives a 1/2 approximation to submodular maximization subject to a matroid constraint.

Friday, November 15, 2019 3:30 pm - 3:30 pm EST (GMT -05:00)

Tutte Colloquium - Marcel Golz

Title: The combinatorics of parametric Feynman integrals

Speaker: Marcel Golz
Affiliation: University of Waterloo
Room: MC 5501

Abstract:

Feynman integrals are used in perturbative quantum field theory to compute the probabilities of processes involving elementary particles. They can be represented as Feynman graphs and exhibit a rich combinatorial structure. The parametric representation of Feynman integrals is particularly suitable to be studied from a combinatorial perspective since it contains well known objects like the Kirchhoff polynomial. 

Friday, November 22, 2019 1:00 pm - 1:00 pm EST (GMT -05:00)

Combinatorial Optimization Reading Group - Sharat Ibrahimpur

Title: Submodular function maximization via the multilinear relaxation and contention resolution schemes

Speaker: Sharat Ibrahimpur
Affiliation: University of Waterloo
Room: MC 5417

Abstract:

I will present a general framework for maximizing a nonnegative submodular set function $f$ subject to a variety of packing type constraints including multiple matroid constraints, knapsack constraints, and their intersections.

Friday, November 22, 2019 3:30 pm - 3:30 pm EST (GMT -05:00)

Tutte Colloquium - Aleksandr Kazachkov

Title: Disjunctive Cuts through the V-Polyhedral Lens

Speaker: Aleksandr Kazachkov
Affiliation: Polytechnique Montréal
Room: MC 5501

Abstract:

Cutting planes, or cuts, are a critical component of modern integer programming solvers, but existing cuts implemented in solvers are relatively simple compared to those in the literature. We discuss the primary reasons for this disparity, as well as our recently-proposed V-polyhedral framework for mitigating some of these difficulties encountered by prior "stronger" cuts.

Friday, November 29, 2019 3:30 pm - 3:30 pm EST (GMT -05:00)

Tutte Colloquium - Debbie Leung

Title: Incompressibility of classical distributions

Speaker: Debbie Leung
Affiliation: University of Waterloo
Room: MC 5501

Abstract:

We prove a general, robust, single-letter lower bound on the achievable rate for ensembles of classical states, which holds even when Alice and Bob share free entanglement and allow a constant local error. 

Thursday, December 5, 2019 9:30 am - 9:30 am EST (GMT -05:00)

CompMath & CO Joint Seminar - Andreas Griewank

Title: How can we optimize nonsmooth objectives globally?

Speaker: Andreas Griewank
Affiliation: Humboldt University, Germany
Room: MC 5501

Abstract:

In machine learning objective functions that are only piecewise smooth and should be globally minimized abound. The standard method of dealing with them is to apply a stochastic gradient method disregarding the rare points of nonsmoothness and hoping for the best as far as global optimality of the computed solution is concerned.