Difference between revisions of "Introductory reading"
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This is a list of entries to the vastly growing literature in the field of topological data analysis, both from a theoretical and an applied point of view. | This is a list of entries to the vastly growing literature in the field of topological data analysis, both from a theoretical and an applied point of view. | ||
− | == Literature | + | == Literature on theory == |
A well-known theoretical introduction to the field. Carlsson: ''Topology and Data''.<ref>CARLSSON, Gunnar. Topology and data. ''Bulletin of the American Mathematical Society'', 2009, 46. Jg., Nr. 2, S. 255-308. [https://doi.org/10.1090/S0273-0979-09-01249-X doi:10.1090/S0273-0979-09-01249-X]</ref> | A well-known theoretical introduction to the field. Carlsson: ''Topology and Data''.<ref>CARLSSON, Gunnar. Topology and data. ''Bulletin of the American Mathematical Society'', 2009, 46. Jg., Nr. 2, S. 255-308. [https://doi.org/10.1090/S0273-0979-09-01249-X doi:10.1090/S0273-0979-09-01249-X]</ref> | ||
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A recently introduced topological summary better suited than persistence diagrams to statistically analyze persistent homology, the persistence landscape. Bubenik: ''Statistical topological data analysis using persistence landscapes.''<ref>BUBENIK, Peter. Statistical topological data analysis using persistence landscapes. ''The Journal of Machine Learning Research'', 2015, 16. Jg., Nr. 1, S. 77-102. http://www.jmlr.org/papers/volume16/bubenik15a/bubenik15a.pdf</ref> | A recently introduced topological summary better suited than persistence diagrams to statistically analyze persistent homology, the persistence landscape. Bubenik: ''Statistical topological data analysis using persistence landscapes.''<ref>BUBENIK, Peter. Statistical topological data analysis using persistence landscapes. ''The Journal of Machine Learning Research'', 2015, 16. Jg., Nr. 1, S. 77-102. http://www.jmlr.org/papers/volume16/bubenik15a/bubenik15a.pdf</ref> | ||
− | == Literature | + | == Literature towards applications == |
A thorough introduction to the field and approaches of computational topology. Edelsbrunner and Harer: ''Computational topology: an introduction''.<ref>EDELSBRUNNER, Herbert; HARER, John. ''Computational topology: an introduction''. American Mathematical Soc., 2010. </ref> | A thorough introduction to the field and approaches of computational topology. Edelsbrunner and Harer: ''Computational topology: an introduction''.<ref>EDELSBRUNNER, Herbert; HARER, John. ''Computational topology: an introduction''. American Mathematical Soc., 2010. </ref> | ||
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The mapper algorithm. Singh et al: ''Topological methods for the analysis of high dimensional data sets and 3d object recognition.''<ref>SINGH, Gurjeet; MÉMOLI, Facundo; CARLSSON, Gunnar E. Topological methods for the analysis of high dimensional data sets and 3d object recognition. In: ''SPBG''. 2007. S. 91-100. [http://dx.doi.org/10.2312/SPBG/SPBG07/091-100 doi:10.2312/SPBG/SPBG07/091-100]</ref> | The mapper algorithm. Singh et al: ''Topological methods for the analysis of high dimensional data sets and 3d object recognition.''<ref>SINGH, Gurjeet; MÉMOLI, Facundo; CARLSSON, Gunnar E. Topological methods for the analysis of high dimensional data sets and 3d object recognition. In: ''SPBG''. 2007. S. 91-100. [http://dx.doi.org/10.2312/SPBG/SPBG07/091-100 doi:10.2312/SPBG/SPBG07/091-100]</ref> | ||
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== References == | == References == | ||
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Latest revision as of 16:16, 20 May 2019
This is a list of entries to the vastly growing literature in the field of topological data analysis, both from a theoretical and an applied point of view.
Literature on theory
A well-known theoretical introduction to the field. Carlsson: Topology and Data.[1]
One of the papers introducing the notion of persistent homology of a filtration. Zomorodian and Carlsson: Computing persistent homology.[2]
A recently introduced topological summary better suited than persistence diagrams to statistically analyze persistent homology, the persistence landscape. Bubenik: Statistical topological data analysis using persistence landscapes.[3]
Literature towards applications
A thorough introduction to the field and approaches of computational topology. Edelsbrunner and Harer: Computational topology: an introduction.[4]
A general overview of persistent homology with an eye towards applications of different numerical libraries. In the supplementaries starting points for own numerical steps are given. Otter et al: A roadmap for the computation of persistent homology.[5]
The mapper algorithm. Singh et al: Topological methods for the analysis of high dimensional data sets and 3d object recognition.[6]
References
- ↑ CARLSSON, Gunnar. Topology and data. Bulletin of the American Mathematical Society, 2009, 46. Jg., Nr. 2, S. 255-308. doi:10.1090/S0273-0979-09-01249-X
- ↑ ZOMORODIAN, Afra; CARLSSON, Gunnar. Computing persistent homology. Discrete & Computational Geometry, 2005, 33. Jg., Nr. 2, S. 249-274. doi:10.1007/s00454-004-1146-y
- ↑ BUBENIK, Peter. Statistical topological data analysis using persistence landscapes. The Journal of Machine Learning Research, 2015, 16. Jg., Nr. 1, S. 77-102. http://www.jmlr.org/papers/volume16/bubenik15a/bubenik15a.pdf
- ↑ EDELSBRUNNER, Herbert; HARER, John. Computational topology: an introduction. American Mathematical Soc., 2010.
- ↑ OTTER, Nina, et al. A roadmap for the computation of persistent homology. EPJ Data Science, 2017, 6. Jg., Nr. 1, S. 17. doi:10.1140/epjds/s13688-017-0109-5
- ↑ SINGH, Gurjeet; MÉMOLI, Facundo; CARLSSON, Gunnar E. Topological methods for the analysis of high dimensional data sets and 3d object recognition. In: SPBG. 2007. S. 91-100. doi:10.2312/SPBG/SPBG07/091-100