Adaptive Kernel Density Estimation with Pre-training
Abstract
Density estimation in high-dimensional settings is an important and challenging statistical problem.Traditional methods based on kernel smoothing are inefficient in high dimensions due to the difficulties in specifying appropriate location-adaptive kernels. In this work, we introduce pre-training, a key idea behind many cutting-edge AI technologies, to the context of non-parametric density estimation. By establishing a pre-trained neural network that can recommend an appropriate location-adaptive kernel for each sample point, efficient density estimation with adaptive kernels is achieved in high dimensions. A wide range of numerical experiments show that this strategy is highly effective for improving density-estimation accuracy, when the target distribution is close to the distribution family for pre-training. When the target distribution is substantially different from the pre-training distribution family, the benefit from the proposed pre-training strategy may be diluted, but can be reactivated by an additional fine-tuning procedure.
Cite
@article{arxiv.2605.13092,
title = {Adaptive Kernel Density Estimation with Pre-training},
author = {Ruitong Zhang and Ke Deng},
journal= {arXiv preprint arXiv:2605.13092},
year = {2026}
}
Comments
8 pages main text, 14 pages total including references and appendix, 3 figures