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arxiv_ml 70% Match Theoretical Research Researchers in machine learning theory,Mathematicians,Control theorists 2 days ago

Kernel Mean Embedding Topology: Weak and Strong Forms for Stochastic Kernels and Implications for Model Learning

graph-neural-networks › graph-learning
📄 Abstract

Abstract: We introduce a novel topology, called Kernel Mean Embedding Topology, for stochastic kernels, in a weak and strong form. This topology, defined on the spaces of Bochner integrable functions from a signal space to a space of probability measures endowed with a Hilbert space structure, allows for a versatile formulation. This construction allows one to obtain both a strong and weak formulation. (i) For its weak formulation, we highlight the utility on relaxed policy spaces, and investigate connections with the Young narrow topology and Borkar (or \( w^* \))-topology, and establish equivalence properties. We report that, while both the \( w^* \)-topology and kernel mean embedding topology are relatively compact, they are not closed. Conversely, while the Young narrow topology is closed, it lacks relative compactness. (ii) We show that the strong form provides an appropriate formulation for placing topologies on spaces of models characterized by stochastic kernels with explicit robustness and learning theoretic implications on optimal stochastic control under discounted or average cost criteria. (iii) We thus show that this topology possesses several properties making it ideal to study optimality and approximations (under the weak formulation) and robustness (under the strong formulation) for many applications.
Authors (2)
Naci Saldi
Serdar Yuksel
Submitted
February 19, 2025
arXiv Category
eess.SY
arXiv PDF

Key Contributions

Introduces a novel Kernel Mean Embedding Topology for stochastic kernels, offering both weak and strong formulations. This topology provides new insights into the properties of relaxed policy spaces and their relation to existing topological structures, addressing limitations in compactness and closure.

Business Value

Provides a foundational theoretical framework that could lead to more robust and predictable machine learning models, especially in areas like reinforcement learning and control systems where understanding convergence is critical.