Distributions of Matching Distances in Topological Data Analysis

@article{Han2018DistributionsOM,
  title={Distributions of Matching Distances in Topological Data Analysis},
  author={So Mang Han and Taylor Okonek and Nikesh Yadav and Xiaojun Zheng},
  journal={ArXiv},
  year={2018},
  volume={abs/1812.11258}
}
  • So Mang Han, Taylor Okonek, +1 author Xiaojun Zheng
  • Published 2018
  • Computer Science, Mathematics, Physics
  • ArXiv
  • In topological data analysis, we want to discern topological and geometric structure of data, and to understand whether or not certain features of data are significant as opposed to simply random noise. While progress has been made on statistical techniques for single-parameter persistence, the case of two-parameter persistence, which is highly desirable for real-world applications, has been less studied. This paper provides an accessible introduction to two-parameter persistent homology and… CONTINUE READING
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