Skip to content

Instantly share code, notes, and snippets.

@Libardo1
Forked from calstad/TDA_resources.md
Created April 4, 2017 13:51
Show Gist options
  • Save Libardo1/52ba73b7cae1a2916cb3d10b58eb7ad5 to your computer and use it in GitHub Desktop.
Save Libardo1/52ba73b7cae1a2916cb3d10b58eb7ad5 to your computer and use it in GitHub Desktop.

Revisions

  1. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 1 deletion.
    2 changes: 1 addition & 1 deletion TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -1,5 +1,5 @@
    # Quick List of Resources for Topological Data Analysis with Emphasis on Machine Learning
    This is just a quick list of resourses on TDA that I through together for [@rickasaurus](https://twitter.com/rickasaurus) after he was asking for links to papers, books, etc on Twitter and is by no means an exhaustive list.
    This is just a quick list of resourses on TDA that I put together for [@rickasaurus](https://twitter.com/rickasaurus) after he was asking for links to papers, books, etc on Twitter and is by no means an exhaustive list.

    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
  2. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 1 deletion.
    2 changes: 1 addition & 1 deletion TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -1,5 +1,5 @@
    # Quick List of Resources for Topological Data Analysis with Emphasis on Machine Learning
    This is just a quick list of resourses on TDA that I through together for [@rickasaurus](https://twitter.com/rickasaurus) after he was asking for links to papers, books, etc on Twitter.
    This is just a quick list of resourses on TDA that I through together for [@rickasaurus](https://twitter.com/rickasaurus) after he was asking for links to papers, books, etc on Twitter and is by no means an exhaustive list.

    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
  3. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 0 deletions.
    1 change: 1 addition & 0 deletions TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -1,4 +1,5 @@
    # Quick List of Resources for Topological Data Analysis with Emphasis on Machine Learning
    This is just a quick list of resourses on TDA that I through together for [@rickasaurus](https://twitter.com/rickasaurus) after he was asking for links to papers, books, etc on Twitter.

    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
  4. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 1 deletion.
    2 changes: 1 addition & 1 deletion TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -1,4 +1,4 @@
    # Quick List of Resources for Topological Data Analysis
    # Quick List of Resources for Topological Data Analysis with Emphasis on Machine Learning

    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
  5. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 0 deletions.
    1 change: 1 addition & 0 deletions TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -10,6 +10,7 @@ Both Carlsson's and Ghrist's survey papers offer a very good introduction to the
    * [Topological Methods for the Analysis of High Dimensional Data Sets and 3D Object Recognition](https://research.math.osu.edu/tgda/mapperPBG.pdf) A more technical presentation of `Mapper`.
    * [Topological Data Analysis and Machine Learning Theory](https://www.birs.ca/workshops/2012/12w5081/report12w5081.pdf) Applications of TDA to machine learning.
    * Ayasdi, the company founded by Gurjeet Singh and Gunnar Carlsson, has several good [videos and whitepapers](http://www.ayasdi.com/resources) on how they use `Mapper` and TDA in machine learning pipelines.
    * [Applied Algebraic Topology Research Network](https://www.ima.umn.edu/topology/) An online research symposium through the IMA that has several recorded talks dealing with TDA and machine learning.

    ## Software
    * [Mapper in Python](http://danifold.net/mapper/)
  6. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 0 deletions.
    1 change: 1 addition & 0 deletions TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -20,4 +20,5 @@ Both Carlsson's and Ghrist's survey papers offer a very good introduction to the
    ## Books
    * [Computational Topology: An Introduction](http://www.amazon.com/Computational-Topology-Introduction-Herbert-Edelsbrunner/dp/0821849255) A good introducgtory book on persistent homology
    * [Elementary Applied Topology](https://www.math.upenn.edu/~ghrist/notes.html) A book by Robert Ghrist that goes beyond applications of algebraic toplogy to data analysis, but is a very good read. There is a very inexpensive print version and the PDF is available for free.
    * [Topological Signal Processing](http://www.amazon.com/Topological-Signal-Processing-Mathematical-Engineering/dp/364236103X) Not directly related to data analysis, but a good book on using topological methods in signal processing.

  7. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 1 addition and 1 deletion.
    2 changes: 1 addition & 1 deletion TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -19,5 +19,5 @@ Both Carlsson's and Ghrist's survey papers offer a very good introduction to the

    ## Books
    * [Computational Topology: An Introduction](http://www.amazon.com/Computational-Topology-Introduction-Herbert-Edelsbrunner/dp/0821849255) A good introducgtory book on persistent homology
    * [Elementary Applied Topology](https://www.math.upenn.edu/~ghrist/notes.html) A book by Robert Ghrist that goes beyond applications of algebraic toplogy to data analysis, but a very good read. There is a very inexpensive print version and the PDF is available for free.
    * [Elementary Applied Topology](https://www.math.upenn.edu/~ghrist/notes.html) A book by Robert Ghrist that goes beyond applications of algebraic toplogy to data analysis, but is a very good read. There is a very inexpensive print version and the PDF is available for free.

  8. @calstad calstad revised this gist Oct 26, 2015. 1 changed file with 6 additions and 2 deletions.
    8 changes: 6 additions & 2 deletions TDA_resources.md
    Original file line number Diff line number Diff line change
    @@ -3,15 +3,19 @@
    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
    * [Topology and Data](http://www.ams.org/journals/bull/2009-46-02/S0273-0979-09-01249-X/S0273-0979-09-01249-X.pdf) by Gunnar Carlsson
    * [Barcodes: The Persistent Topology of Data](https://www.math.upenn.edu/~ghrist/preprints/barcodes.pdf)
    * [Barcodes: The Persistent Topology of Data](https://www.math.upenn.edu/~ghrist/preprints/barcodes.pdf) by Robert Ghrist

    ## Other Papers and Web Resources
    * [Extracting insights from the shape of complex data using topology](http://www.nature.com/articles/srep01236) A good introductory paper in Nature on the `Mapper` algorithm.
    * [Topological Methods for the Analysis of High Dimensional Data Sets and 3D Object Recognition](https://research.math.osu.edu/tgda/mapperPBG.pdf) A more technical presentation of `Mapper`.
    * [Topological Data Analysis and Machine Learning Theory](https://www.birs.ca/workshops/2012/12w5081/report12w5081.pdf) Applications of TDA to machine learning.
    * Ayasdi, the company founded by Gurjeet Singh and Gunnar Carlsson, have several good [videos and whitepapers](http://www.ayasdi.com/resources) on how they use `Mapper` and TDA in machine learning pipelines.
    * Ayasdi, the company founded by Gurjeet Singh and Gunnar Carlsson, has several good [videos and whitepapers](http://www.ayasdi.com/resources) on how they use `Mapper` and TDA in machine learning pipelines.

    ## Software
    * [Mapper in Python](http://danifold.net/mapper/)
    * [TDA: Statistical Tools for Topological Data Analysis](https://cran.r-project.org/web/packages/TDA/index.html) R package
    * [JavaPlex](https://github.com/appliedtopology/javaplex) Persistent Homology in Java and Matlab
    * [Perseus](http://www.sas.upenn.edu/~vnanda/perseus/) Persistent Homology in C++

    ## Books
    * [Computational Topology: An Introduction](http://www.amazon.com/Computational-Topology-Introduction-Herbert-Edelsbrunner/dp/0821849255) A good introducgtory book on persistent homology
  9. @calstad calstad renamed this gist Oct 26, 2015. 1 changed file with 0 additions and 0 deletions.
    File renamed without changes.
  10. @calstad calstad created this gist Oct 26, 2015.
    19 changes: 19 additions & 0 deletions markdown
    Original file line number Diff line number Diff line change
    @@ -0,0 +1,19 @@
    # Quick List of Resources for Topological Data Analysis

    ## Survey Papers
    Both Carlsson's and Ghrist's survey papers offer a very good introduction to the subject
    * [Topology and Data](http://www.ams.org/journals/bull/2009-46-02/S0273-0979-09-01249-X/S0273-0979-09-01249-X.pdf) by Gunnar Carlsson
    * [Barcodes: The Persistent Topology of Data](https://www.math.upenn.edu/~ghrist/preprints/barcodes.pdf)

    ## Other Papers and Web Resources
    * [Extracting insights from the shape of complex data using topology](http://www.nature.com/articles/srep01236) A good introductory paper in Nature on the `Mapper` algorithm.
    * [Topological Methods for the Analysis of High Dimensional Data Sets and 3D Object Recognition](https://research.math.osu.edu/tgda/mapperPBG.pdf) A more technical presentation of `Mapper`.
    * [Topological Data Analysis and Machine Learning Theory](https://www.birs.ca/workshops/2012/12w5081/report12w5081.pdf) Applications of TDA to machine learning.
    * Ayasdi, the company founded by Gurjeet Singh and Gunnar Carlsson, have several good [videos and whitepapers](http://www.ayasdi.com/resources) on how they use `Mapper` and TDA in machine learning pipelines.

    ## Software

    ## Books
    * [Computational Topology: An Introduction](http://www.amazon.com/Computational-Topology-Introduction-Herbert-Edelsbrunner/dp/0821849255) A good introducgtory book on persistent homology
    * [Elementary Applied Topology](https://www.math.upenn.edu/~ghrist/notes.html) A book by Robert Ghrist that goes beyond applications of algebraic toplogy to data analysis, but a very good read. There is a very inexpensive print version and the PDF is available for free.