An Introduction to Persistent Homology and Simplicial Collapses
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IISERM
Abstract
The explosion of data has brought in the fervent need to analyze large and higher-dimensional
datasets accurately and fast. Conventional tools are quickly becoming redundant when the
focus is on the speed of computation and the expectations of impactful insight. There is
a vibrant community of researchers who are looking at topology-based tools which are
able to extract shape-pertinent features of these large datasets. Looking at alternate and
non-classical tools has led to the development of some of the most impactful sub-fields of
mathematics, one being Topological Data Analysis, which has been widely accepted and
noticed for its effectiveness on certain use cases. This thesis will focus on studying a method
called Persistent Homology, which in a sense forms the vein of Topological Data Analysis.
This thesis will build mathematical theory to understand Persistent Homology, and subse-
quently proceed to comment on contemporary challenges with regard to the method, and
novel techniques to overcome them including algorithmic approaches with experimental
observations.