Back to Search Start Over

Robust Topological Inference: Distance To a Measure and Kernel Distance.

Authors :
Chazal, Frédéric
Fasy, Brittany
Lecci, Fabrizio
Michel, Bertrand
Rinaldo, Alessandro
Wasserman, Larry
Source :
Journal of Machine Learning Research. 2018, Vol. 18 Issue 154-234, p1-40. 40p.
Publication Year :
2018

Abstract

Let P be a distribution with support S. The salient features of S can be quantified with persistent homology, which summarizes topological features of the sublevel sets of the distance function (the distance of any point x to S). Given a sample from P we can infer the persistent homology using an empirical version of the distance function. However, the empirical distance function is highly non-robust to noise and outliers. Even one outlier is deadly. The distance-to-a-measure (DTM), introduced by Chazal et al. (2011), and the kernel distance, introduced by Phillips et al. (2014), are smooth functions that provide useful topological information but are robust to noise and outliers. Chazal et al. (2015) derived concentration bounds for DTM. Building on these results, we derive limiting distributions and confidence sets, and we propose a method for choosing tuning parameters. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15324435
Volume :
18
Issue :
154-234
Database :
Academic Search Index
Journal :
Journal of Machine Learning Research
Publication Type :
Academic Journal
Accession number :
131240439