The extension of persistent homology to multi-parameter setups is an algorithmic challenge. Since most computation tasks scale badly with the size of the input complex, an important pre-processing step consists of simplifying the input while maintaining the homological information. We present an algorithm that drastically reduces the size of an input. Our approach is an extension of the chunk algorithm for persistent homology (Bauer et al., Topological Methods in Data Analysis and Visualization III, 2014). We show that our construction produces the smallest multi-filtered chain complex among all the complexes quasi-isomorphic to the input, improving on the guarantees of previous work in the context of discrete Morse theory. Our algorithm al...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Persistent homology is a popular and powerful tool for capturing topological features of data. Advan...
We present a parallelizable algorithm for computing the persistent homology of a filtered chain comp...
We present a parallel algorithm for computing the persistent homology of a filtered chain complex. O...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
The persistence diagram of a filtered simplicial com- plex is usually computed by reducing the bound...
We present an algorithm for computing the barcode of the image of a morphism in persistent homology ...
We apply ideas from mesh generation to improve the time and space complexity of computing the persis...
In various applications of data classification and clustering problems, multi-parameter analysis is ...
In this paper, we present the first output-sensitive algorithm to compute the persistence diagram of...
International audienceThis article introduces an algorithm to compute the persistent homology of a f...
International audienceThis article introduces an algorithm to compute the persistent homology of a f...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Persistent homology is a popular and powerful tool for capturing topological features of data. Advan...
We present a parallelizable algorithm for computing the persistent homology of a filtered chain comp...
We present a parallel algorithm for computing the persistent homology of a filtered chain complex. O...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
Persistent homology allows for tracking topological features, like loops, holes and their higher-dim...
The persistence diagram of a filtered simplicial com- plex is usually computed by reducing the bound...
We present an algorithm for computing the barcode of the image of a morphism in persistent homology ...
We apply ideas from mesh generation to improve the time and space complexity of computing the persis...
In various applications of data classification and clustering problems, multi-parameter analysis is ...
In this paper, we present the first output-sensitive algorithm to compute the persistence diagram of...
International audienceThis article introduces an algorithm to compute the persistent homology of a f...
International audienceThis article introduces an algorithm to compute the persistent homology of a f...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Topological data analysis and its main method, persistent homology, provide a toolkit for computing ...
Persistent homology is a popular and powerful tool for capturing topological features of data. Advan...