Spectral Persistent Homology: Persistence Signals
Van Huffel, Michael Etienne, Palo, Matteo
In this paper, we present a novel family of descriptors for persistence diagrams, reconceptualizing them as signals in $\mathbb R^2_+$. This marks a significant advancement in Topological Data Analysis. Our methodology transforms persistence diagrams into a finite-dimensional vector space through functionals of the discrete measures induced by these diagrams. While our focus is primarily on frequency-based transformations, we do not restrict our approach exclusively to this types of techniques. We term this family of transformations as $Persistence$ $Signals$ and prove stability for some members of this family against the 1-$Kantorovitch$-$Rubinstein$ metric, ensuring its responsiveness to subtle data variations. Extensive comparative analysis reveals that our descriptor performs competitively with the current state-of-art from the topological data analysis literature, and often surpasses, the existing methods. This research not only introduces a groundbreaking perspective for data scientists but also establishes a foundation for future innovations in applying persistence diagrams in data analysis and machine learning.
Dec-28-2023
- Country:
- North America > United States (0.04)
- Europe
- Switzerland > Zürich
- Zürich (0.14)
- Spain > Andalusia
- Granada Province > Granada (0.04)
- Switzerland > Zürich
- Genre:
- Overview (0.93)
- Research Report
- New Finding (0.68)
- Promising Solution (0.46)
- Industry:
- Health & Medicine (0.93)