Exciting recent developments in Topological Data Analysis have aimed at combining homology-based invariants with Machine Learning. In this article, we use hierarchical stabilization to bridge between persistence and kernel-based methods by introducing the so-called stable rank kernels. A fundamental property of the stable rank kernels is that they depend on metrics to compare persistence modules. We illustrate their use on artificial and real-world datasets and show that by varying the metric we can improve accuracy in classification tasks
We present a new proof of the algebraic stability theorem, perhaps the main theorem in the theory of...
In this thesis we will study the stability of the persistent homology pipeline used in topological d...
Topological Data Analysis (TDA) is a recent and growing branch of statistics devoted to the study o...
Rank or the minimal number of generators is a natural invariant attached to any n-dimensional persis...
Persistent homology barcodes and diagrams are a cornerstone of topological data analysis. Widely use...
Stable rank has recently been proposed as an invariant to encode the result of persistent homology, ...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Topological data analysis offers a rich source of valuable information to study vision problems. Yet...
Acknowledgments We gratefully acknowledge Roel Neggers for providing the DALES simulation data. JLS ...
Topological data analysis offers a rich source of valu-able information to study vision problems. Ye...
Homology gives a tool to measure the "holes" in topological spaces. Persistent homology extends the ...
Multidimensional persistence studies topological features of shapes by analyzing the lower level set...
We consider the problem of supervised learning with summary representations of topological features ...
We consider the problem of statistical computations with persistence diagrams, a summary representat...
In this position paper, we present a brief overview of the ways topological tools, in particular per...
We present a new proof of the algebraic stability theorem, perhaps the main theorem in the theory of...
In this thesis we will study the stability of the persistent homology pipeline used in topological d...
Topological Data Analysis (TDA) is a recent and growing branch of statistics devoted to the study o...
Rank or the minimal number of generators is a natural invariant attached to any n-dimensional persis...
Persistent homology barcodes and diagrams are a cornerstone of topological data analysis. Widely use...
Stable rank has recently been proposed as an invariant to encode the result of persistent homology, ...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Topological data analysis offers a rich source of valuable information to study vision problems. Yet...
Acknowledgments We gratefully acknowledge Roel Neggers for providing the DALES simulation data. JLS ...
Topological data analysis offers a rich source of valu-able information to study vision problems. Ye...
Homology gives a tool to measure the "holes" in topological spaces. Persistent homology extends the ...
Multidimensional persistence studies topological features of shapes by analyzing the lower level set...
We consider the problem of supervised learning with summary representations of topological features ...
We consider the problem of statistical computations with persistence diagrams, a summary representat...
In this position paper, we present a brief overview of the ways topological tools, in particular per...
We present a new proof of the algebraic stability theorem, perhaps the main theorem in the theory of...
In this thesis we will study the stability of the persistent homology pipeline used in topological d...
Topological Data Analysis (TDA) is a recent and growing branch of statistics devoted to the study o...