Radial-VCReg: More Informative Representation Learning Through Radial Gaussianization
About
Self-supervised learning aims to learn maximally informative representations, but explicit information maximization is hindered by the curse of dimensionality. Existing methods like VCReg address this by regularizing first and second-order feature statistics, which cannot fully achieve maximum entropy. We propose Radial-VCReg, which augments VCReg with a radial Gaussianization loss that aligns feature norms with the Chi distribution-a defining property of high-dimensional Gaussians. We prove that Radial-VCReg transforms a broader class of distributions towards normality compared to VCReg and show on synthetic and real-world datasets that it consistently improves performance by reducing higher-order dependencies and promoting more diverse and informative representations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Distribution Matching | RAC Gaussian impostor (10D) | zW20.68 | 5 | |
| Distribution Matching | RAC Gaussian impostor 128D | zW20.22 | 5 |