Scalable Random Wavelet Features: Efficient Non-Stationary Kernel Approximation with Convergence Guarantees

Abstract

Modeling non-stationary processes, where statistical properties vary across the input domain, is a critical challenge in machine learning; yet most scalable methods rely on a simplifying assumption of stationarity. This forces a difficult trade-off: use expressive but computationally demanding models like Deep Gaussian Processes, or scalable but limited methods like Random Fourier Features (RFF). We close this gap by introducing Random Wavelet Features (RWF), a framework that constructs scalable, non-stationary kernel approximations by sampling from wavelet families. By harnessing the inherent localization and multi-resolution structure of wavelets, RWF generates an explicit feature map that captures complex, input-dependent patterns. Our framework provides a principled way to generalize RFF to the non-stationary setting and comes with a comprehensive theoretical analysis, including positive definiteness, unbiasedness, and uniform convergence guarantees. We demonstrate empirically on a range of challenging synthetic and real-world datasets that RWF outperforms stationary random features and offers a compelling accuracy-efficiency trade-off against more complex models, unlocking scalable and expressive kernel methods for a broad class of real-world non-stationary problems.

Cite

Text

Kumar and Chakraborty. "Scalable Random Wavelet Features: Efficient Non-Stationary Kernel Approximation with Convergence Guarantees." International Conference on Learning Representations, 2026.

Markdown

[Kumar and Chakraborty. "Scalable Random Wavelet Features: Efficient Non-Stationary Kernel Approximation with Convergence Guarantees." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/kumar2026iclr-scalable/)

BibTeX

@inproceedings{kumar2026iclr-scalable,
  title     = {{Scalable Random Wavelet Features: Efficient Non-Stationary Kernel Approximation with Convergence Guarantees}},
  author    = {Kumar, Sawan and Chakraborty, Souvik},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/kumar2026iclr-scalable/}
}