Heat and Matérn Kernels on Matchings
Dmitry Eremeev, Salem Said, Viacheslav Borovitskiy
TLDR
This paper introduces a framework for geometric heat and Matérn kernels on matchings, with a sub-exponential evaluation algorithm.
Key contributions
- Developed a principled framework for geometric kernels on discrete, non-Euclidean matching spaces.
- Extended heat and Matérn kernel families to matchings, incorporating smoothness and stationarity.
- Introduced a novel sub-exponential algorithm leveraging zonal polynomials for efficient kernel evaluation.
- Explored framework transfer to phylogenetic trees, identifying limitations and a significant open problem.
Why it matters
This paper addresses the challenge of applying kernel methods to discrete matching spaces by providing a principled framework and efficient evaluation. This breakthrough enables the use of powerful geometric kernels in areas like biology, where matchings and trees are crucial data modalities.
Original Abstract
Applying kernel methods to matchings is challenging due to their discrete, non-Euclidean nature. In this paper, we develop a principled framework for constructing geometric kernels that respect the natural geometry of the space of matchings. To this end, we first provide a complete characterization of stationary kernels, i.e. kernels that respect the inherent symmetries of this space. Because the class of stationary kernels is too broad, we specifically focus on the heat and Matérn kernel families, adding an appropriate inductive bias of smoothness to stationarity. While these families successfully extend widely popular Euclidean kernels to matchings, evaluating them naively incurs a prohibitive super-exponential computational cost. To overcome this difficulty, we introduce and analyze a novel, sub-exponential algorithm leveraging zonal polynomials for efficient kernel evaluation. Finally, motivated by the known bijective correspondence between matchings and phylogenetic trees-a crucial data modality in biology-we explore whether our framework can be seamlessly transferred to the space of trees, establishing novel negative results and identifying a significant open problem.
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