Topological Data Analysis in Python
Project description
Introduction
mogutda
contains Python codes that demonstrate the numerical calculation
of algebraic topology in an application to topological data analysis
(TDA). Its core code is the numerical methods concerning implicial complex,
and the estimation of homology and Betti numbers.
Topological data analysis aims at studying the shapes of the data, and draw some insights from them. A lot of machine learning algorithms deal with distances, which are extremely useful, but they miss the information the data may carry from their geometry.
History
The codes in this package were developed as a demonstration of a few posts of my blog.
It was not designed to be a Python package but a pedagogical collection of codes.
(See: PyTDA.)
However, the codes and the blog posts have been unexpectedly popular. Therefore,
I modularized the code into the package mogu
.
(or corresponding repository: MoguNumerics)
However, mogu
is simply a collection of unrelated numerical routines with a lot of
dependencies, but the part of TDA can be quite independent.
In order to provide other researchers and developers an independent package, which is compact (without
unecessary alternative packages to load), and efficient, I decided to modularize
the codes of TDA separately, and name this package mogutda
.
Prerequisite
It runs under Python 3.8, 3.9, 3.10, and 3.11.
Simple Tutorial: Simplicial Complex
You can install by:
pip install mogutda
To establish a simplicial complex for a torus, type
import numpy as np
from mogutda import SimplicialComplex
torus_sc = [(1,2,4), (4,2,5), (2,3,5), (3,5,6), (5,6,1), (1,6,2), (6,7,2), (7,3,2),
(1,3,4), (3,4,6), (4,6,7), (4,5,7), (5,7,1), (7,3,1)]
torus_c = SimplicialComplex(simplices=torus_sc)
To retrieve its Betti numbers, type:
print(torus_c.betti_number(0)) # print 1
print(torus_c.betti_number(1)) # print 2
print(torus_c.betti_number(2)) # print 1
Demo Codes and Blog Entries
Codes in this repository are demo codes for a few entries of my blog, Everything about Data Analytics, and the corresponding entries are:
- Starting the Journey of Topological Data Analysis (TDA) (August 3, 2015)
- Constructing Connectivities (September 14, 2015)
- Homology and Betti Numbers (November 3, 2015)
- Topology in Physics and Computing (November 10, 2015)
- Persistence (December 20, 2015)
- Topological Phases (October 6, 2016)
- moguTDA: Python package for Simplicial Complex (July 2, 2018)
Wolfram Demonstration
Richard Hennigan put a nice Wolfram Demonstration online explaining what the simplicial complexes are, and how homologies are defined:
News
- 08/18/2023:
mogutda
0.4.0 released. - 06/20/2023:
mogutda
0.3.5 released. - 09/09/2022:
mogutda
0.3.4 released. - 07/15/2021:
mogutda
0.3.3 released. - 04/10/2021:
mogutda
0.3.2 released. - 11/28/2020:
mogutda
0.3.1 released. - 08/16/2020:
mogutda
0.3.0 released. - 04/28/2020:
mogutda
0.2.1 released. - 01/16/2020:
mogutda
0.2.0 released. - 02/20/2019:
mogutda
0.1.5 released. - 12/31/2018:
mogutda
0.1.4 released. - 07/18/2018:
mogutda
0.1.3 released. - 07/02/2018:
mogutda
0.1.2 released. - 06/13/2018:
mogutda
0.1.1 released. - 06/11/2018:
mogutda
0.1.0 released.
Other TDA Packages
It is recommended that for real application, you should use the following packages for efficiency, because my codes serve the pedagogical purpose only.
C++
Python
R
Contributions
If you want to contribute, feel free to fork the repository, and submit a pull request whenever you are ready.
If you spot any bugs or issues, go to the Issue page.
I may not approve pull request immediately if your suggested change is big. If you want to incorporate something big, please discuss with me first.
References
- Afra J. Zomorodian. Topology for Computing (New York, NY: Cambridge University Press, 2009). [Amazon]
- Afra J. Zomorodian. "Topological Data Analysis," Proceedings of Symposia in Applied Mathematics (2011). [link]
- Afra Zomorodian, Gunnar Carlsson, “Computing Persistent Homology,” Discrete Comput. Geom. 33, 249-274 (2005). [pdf]
- Gunnar Carlsson, “Topology and Data”, Bull. Amer. Math. Soc. 46, 255-308 (2009). [link]
- Jeffrey Ray, Marcello Trovati, "A Survey of Topological Data Analysis (TDA) Methods Implemented in Python," in Advances in Intelligent Networking and Collaborative Systems, Springer (2018).
- P. Y. Lum, G. Singh, A. Lehman, T. Ishkanov, M. Vejdemo-Johansson, M. Alagappan, J. Carlsson, G. Carlsson, “Extracting insights from the shape of complex data using topology”, Sci. Rep. 3, 1236 (2013). [link]
- Robert Ghrist, “Barcodes: The persistent topology of data,” Bull. Amer. Math. Soc. 45, 1-15 (2008). [pdf]
Links
- PyPI: https://pypi.org/project/mogutda/
- Documentation: https://mogutda.readthedocs.io/
- Bug Reports: https://github.com/stephenhky/MoguTDA/issues
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
File details
Details for the file mogutda-0.4.2.tar.gz
.
File metadata
- Download URL: mogutda-0.4.2.tar.gz
- Upload date:
- Size: 9.5 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/4.0.2 CPython/3.10.13
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 08ff9cf620f04e7f3dc336c5a8613475966905403b84ef053b08ce2948247291 |
|
MD5 | b973f490447d2b6d0d269f24e342ad01 |
|
BLAKE2b-256 | 2d5898b5b337732846c686d12fe598b123d533027ae0e434bed82cac7ca7d63a |