Scalable Kernel-Based Distances for Statistical Inference and Integration
Masha Naslidnyk

TL;DR
This paper thoroughly studies kernel-based distances, especially MMD, proposing improved estimators and introducing novel kernel quantile discrepancies for more effective statistical inference and integration.
Contribution
It introduces improved MMD estimators for simulation and conditional expectation tasks and proposes kernel quantile discrepancies as a new alternative to MMD.
Findings
Proposed a theoretically sound improved MMD estimator.
Developed an MMD-based estimator for conditional expectations.
Introduced kernel quantile discrepancies as a competitive alternative.
Abstract
Representing, comparing, and measuring the distance between probability distributions is a key task in computational statistics and machine learning. The choice of representation and the associated distance determine properties of the methods in which they are used: for example, certain distances can allow one to encode robustness or smoothness of the problem. Kernel methods offer flexible and rich Hilbert space representations of distributions that allow the modeller to enforce properties through the choice of kernel, and estimate associated distances at efficient nonparametric rates. In particular, the maximum mean discrepancy (MMD), a kernel-based distance constructed by comparing Hilbert space mean functions, has received significant attention due to its computational tractability and is favoured by practitioners. In this thesis, we conduct a thorough study of kernel-based…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Statistical Methods and Inference · Stochastic Gradient Optimization Techniques
