Authors
Bartosz Zieliński, Michał Lipiński, Mateusz Juda, Matthias Zeppelzauer, Paweł Dłotko
Publication date
2021/3
Journal
Artificial Intelligence Review
Volume
54
Pages
1969-2009
Publisher
Springer Netherlands
Description
Persistent homology is a rigorous mathematical theory that provides a robust descriptor of data in the form of persistence diagrams (PDs) which are 2D multisets of points. Their variable size makes them, however, difficult to combine with typical machine learning workflows. In this paper we introduce persistence codebooks, a novel expressive and discriminative fixed-size vectorized representation of PDs that adapts to the inherent sparsity of persistence diagrams. To this end, we adapt bag-of-words, vectors of locally aggregated descriptors and Fischer vectors for the quantization of PDs. Persistence codebooks represent PDs in a convenient way for machine learning and statistical analysis and have a number of favorable practical and theoretical properties including 1-Wasserstein stability. We evaluate the presented representations on several heterogeneous datasets and show their (high) discriminative …
Total citations
20182019202020212022202320241247752
Scholar articles
B Zieliński, M Lipiński, M Juda, M Zeppelzauer… - Artificial Intelligence Review, 2021
B Zielinski, M Lipinski, M Juda, M Zeppelzauer… - arXiv preprint arXiv:1802.04852, 2018