Measuring the Discrepancy between Conditional Distributions: Methods, Properties and Applications
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Repo contents: IJCAI_20_presentation_slides.pdf, MATLAB, Python, README.md
Authors
Shujian Yu, Ammar Shaker, Francesco Alesiani, Jose C. Principe
arXiv ID
2005.02196
Category
cs.LG: Machine Learning
Cross-listed
cs.IT,
stat.ML
Citations
0
Repository
https://github.com/SJYuCNEL/Bregman-Correntropy-Conditional-Divergence
โญ 4
Last Checked
4 months ago
Abstract
We propose a simple yet powerful test statistic to quantify the discrepancy between two conditional distributions. The new statistic avoids the explicit estimation of the underlying distributions in highdimensional space and it operates on the cone of symmetric positive semidefinite (SPS) matrix using the Bregman matrix divergence. Moreover, it inherits the merits of the correntropy function to explicitly incorporate high-order statistics in the data. We present the properties of our new statistic and illustrate its connections to prior art. We finally show the applications of our new statistic on three different machine learning problems, namely the multi-task learning over graphs, the concept drift detection, and the information-theoretic feature selection, to demonstrate its utility and advantage. Code of our statistic is available at https://bit.ly/BregmanCorrentropy.
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