Assume that a finite set of points is randomly sampled from a subspace of a metric space. Recent advances in computational topology have provided several approaches to recovering the geometric and topological properties of the underlying space. In this paper we take a statistical approach to this problem.We assume that the data is randomly sampled from an unknown probability distribution. We define two filtered complexes with which we can calculate the persistent homology of a probability distribution. Using statistical estimators for samples from certain families of distributions, we show that we can recover the persistent homology of the underlying distribution
Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-scale topo...
We consider the problem of statistical computations with persistence diagrams, a summary representat...
Abstract: We discuss and review recent developments in the area of applied algebraic topology, such ...
Assume that a finite set of points is randomly sampled from a subspace of a metric space. Recent adv...
Computational topology has recently known an important development toward data analysis, giving birt...
Computational topology has recently known an important development toward data analysis, giving birt...
International audienceComputational topology has recently seen an important development toward data ...
The statistical inference on persistent homology incurs computation on a grid of points, which is co...
Homology gives a tool to measure the "holes" in topological spaces. Persistent homology extends the ...
Persistent homology is a method for probing topological properties of point clouds and functions. Th...
Topological Data Analysis (TDA) is a novel statistical technique, particularly powerful for the anal...
Abstract. Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-...
Abstract: We discuss and review recent developments in the area of applied algebraic topology, such ...
In this paper we examine the use of topological methods for multivariate statistics. Using persisten...
Until very recently, topological data analysis and topological inference methods mostlyrelied on det...
Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-scale topo...
We consider the problem of statistical computations with persistence diagrams, a summary representat...
Abstract: We discuss and review recent developments in the area of applied algebraic topology, such ...
Assume that a finite set of points is randomly sampled from a subspace of a metric space. Recent adv...
Computational topology has recently known an important development toward data analysis, giving birt...
Computational topology has recently known an important development toward data analysis, giving birt...
International audienceComputational topology has recently seen an important development toward data ...
The statistical inference on persistent homology incurs computation on a grid of points, which is co...
Homology gives a tool to measure the "holes" in topological spaces. Persistent homology extends the ...
Persistent homology is a method for probing topological properties of point clouds and functions. Th...
Topological Data Analysis (TDA) is a novel statistical technique, particularly powerful for the anal...
Abstract. Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-...
Abstract: We discuss and review recent developments in the area of applied algebraic topology, such ...
In this paper we examine the use of topological methods for multivariate statistics. Using persisten...
Until very recently, topological data analysis and topological inference methods mostlyrelied on det...
Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-scale topo...
We consider the problem of statistical computations with persistence diagrams, a summary representat...
Abstract: We discuss and review recent developments in the area of applied algebraic topology, such ...