Persistence: A versatile library for topological data analysis.

[ bsd3, data, library, math ] [ Propose Tags ]

A topological data analysis library motivated by flexibility when it comes to the type of data being analyzed. If your data comes with a meaningful binary function into an ordered set, you can use Persistence to analyze your data. The library also provides functions for analyzing directed/undirected, weighted/unweighted graphs. See the README for resources on learning about topological data anlysis.


[Skip to Readme]

Downloads

Maintainer's Corner

Package maintainers

For package maintainers and hackage trustees

Candidates

Versions [RSS] 1.0, 1.1, 1.1.1, 1.1.2, 1.1.3, 1.1.4, 1.1.4.1, 1.1.4.2, 2.0, 2.0.1, 2.0.2, 2.0.3
Change log changelog.md
Dependencies base (>=4.0 && <4.13), containers (>0.5), maximal-cliques (>=0.1), parallel (>=3.2 && <3.3), vector (>=0.12) [details]
License BSD-3-Clause
Copyright 2019 Eben Kadile
Author Eben Kadile
Maintainer eben.cowley42@gmail.com
Category Data, Math
Home page https://github.com/Ebanflo42/Persistence
Bug tracker https://github.com/Ebanflo42/Persistence/issues
Source repo head: git clone https://github.com/Ebanflo42/Persistence
Uploaded by Ebanflo at 2019-08-08T08:44:36Z
Distributions
Reverse Dependencies 1 direct, 0 indirect [details]
Downloads 6182 total (13 in the last 30 days)
Rating (no votes yet) [estimated by Bayesian average]
Your Rating
  • λ
  • λ
  • λ
Status Docs uploaded by user
Build status unknown [no reports yet]

Readme for Persistence-2.0.1

[back to package description]

Persistence

A topological data analysis library for Haskell.

This library is motivated by flexibility when it comes to the type of data being analyzed. If your data comes with a meaningful binary function into into an ordered set, you can use Persistence to analyze your data. The library also provides functions for analyzing directed/undirected, weighted/unweighted graphs.

Visit https://hackage.haskell.org/package/Persistence to see the documentation for the stable version. There is also documentation in each module.

GitHub: https://github.com/Ebanflo42/Persistence

If you have the Haskell stack tool installed, compile and run tests with stack test (you may have to expose the modules Util and Matrix in the file Persistence.cabal to get it to work).

Learning about Topological Data Analysis

Computing simplicial homology:

https://jeremykun.com/2013/04/10/computing-homology/

Constructing the Vietoris-Rips complex:

https://pdfs.semanticscholar.org/e503/c24dcc7a8110a001ae653913ccd064c1044b.pdf

Constructing the Cech complex:

https://www.academia.edu/15228439/Efficient_construction_of_the_%C4%8Cech_complex

Computing persistent homology:

http://geometry.stanford.edu/papers/zc-cph-05/zc-cph-05.pdf

The algorithm for finding the directed clique complex is inspired by the pseudocode in the supplementary materials of this paper:

https://www.frontiersin.org/articles/10.3389/fncom.2017.00048/full

Computing and working with persistence landscapes:

https://academic.csuohio.edu/bubenik_p/papers/persistenceLandscapes.pdf

Major TODOs:

Testing.hs:

  1. More tests for Persistence landscape functions.

  2. Make some filtrations whose vertices don't all have index 0 and test persistent homology on them.

SimplicialComplex.hs:

  1. Fix simplicial homology over the integers.

  2. Implement construction of the Cech complex (n points form an (n-1)-simplex if balls of a certain radius centered at each of the points intersect).

  3. Implement construction of the alpha-complex (sub-complex of the Delaunay triangulation where the vertices of every simplex are within a certain distance).

See each of the files for an overview of its inner-workings.