Scalable Machine Learning Algorithms using Path Signatures
Csaba T\'oth

TL;DR
This paper explores scalable machine learning methods leveraging path signatures, providing new models that improve efficiency and robustness for sequential and structured data analysis.
Contribution
It introduces novel models combining rough path theory with probabilistic, deep learning, and kernel methods, including signature kernels, tensor frameworks, and graph-based models.
Findings
Gaussian processes with signature kernels for uncertainty quantification
Scalable deep models using low-rank tensor structures
Expressive graph models via expected signatures and diffusion processes
Abstract
The interface between stochastic analysis and machine learning is a rapidly evolving field, with path signatures - iterated integrals that provide faithful, hierarchical representations of paths - offering a principled and universal feature map for sequential and structured data. Rooted in rough path theory, path signatures are invariant to reparameterization and well-suited for modelling evolving dynamics, long-range dependencies, and irregular sampling - common challenges in real-world time series and graph data. This thesis investigates how to harness the expressive power of path signatures within scalable machine learning pipelines. It introduces a suite of models that combine theoretical robustness with computational efficiency, bridging rough path theory with probabilistic modelling, deep learning, and kernel methods. Key contributions include: Gaussian processes with signature…
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Taxonomy
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