Topological detection of monotone rank

Wednesday, November 7, 2018 - 15:00 to 16:00

Thackeray 427

Speaker Information
Alexandra Yarosh
Penn State

Abstract or Additional Information


Monotone rank of a matrix is the minimal possible rank of a matrix obtained by applying arbitrary monotone functions to each row. The problem of finding the monotone rank often arises in neuroscience context, in particular in estimating the dimension of the  space of stimuli, sampled by neurons. While an exact algorithm for computing the monotone rank is unknown, it can be efficiently estimated using topological methods, as it is closely related to the geometry and topology of hyperplane arrangements.

A natural tool that captures the essence of the problem is directed complexes -- a generalization of simplicial complexes that allows us to keep track of the order of vertices. Directed complexes capture much of the relevant geometric information. For example, the nonlinear rank, as well as other geometric properties of data can be estimated from the homology of an associated directed complex. I will present results and conjectures about the directed complexes associated to some problems of estimating the dimension of the space of stimuli.