Topological Correlation
By: Isabella Mastroianni, Ulderico Fugacci
Potential Business Impact:
Finds patterns by comparing data in new ways.
We introduce two novel concepts, topological difference and topological correlation, that offer a new perspective on the discriminative power of multiparameter persistence. The former quantifies the discrepancy between multiparameter and monoparameter persistence, while the other leverages this gap to measure the interdependence of filtering functions. Our framework sheds light on the expressive advantage of multiparameter over monoparameter persistence and suggests potential applications.
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