A Measure-Theoretic Approach to Kernel Conditional Mean Embeddings
Abstract
We present a new operator-free, measure-theoretic approach to the conditional mean embedding as a random variable taking values in a reproducing kernel Hilbert space. While the kernel mean embedding of marginal distributions has been defined rigorously, the existing operator-based approach of the conditional version lacks a rigorous treatment, and depends on strong assumptions that hinder its analysis. Our approach does not impose any of the assumptions that the operator-based counterpart requires. We derive a natural regression interpretation to obtain empirical estimates, and provide a thorough analysis of its properties, including universal consistency with improved convergence rates. As natural by-products, we obtain the conditional analogues of the Maximum Mean Discrepancy and Hilbert-Schmidt Independence Criterion, and demonstrate their behaviour via simulations.
Cite
Text
Park and Muandet. "A Measure-Theoretic Approach to Kernel Conditional Mean Embeddings." Neural Information Processing Systems, 2020.Markdown
[Park and Muandet. "A Measure-Theoretic Approach to Kernel Conditional Mean Embeddings." Neural Information Processing Systems, 2020.](https://mlanthology.org/neurips/2020/park2020neurips-measuretheoretic/)BibTeX
@inproceedings{park2020neurips-measuretheoretic,
title = {{A Measure-Theoretic Approach to Kernel Conditional Mean Embeddings}},
author = {Park, Junhyung and Muandet, Krikamol},
booktitle = {Neural Information Processing Systems},
year = {2020},
url = {https://mlanthology.org/neurips/2020/park2020neurips-measuretheoretic/}
}