0
0

Density estimation via mixture discrepancy and moments

Zhengyang Lei
Sihong Shao
Abstract

With the aim of generalizing histogram statistics to higher dimensional cases, density estimation via discrepancy based sequential partition (DSP) has been proposed [D. Li, K. Yang, W. Wong, Advances in Neural Information Processing Systems (2016) 1099-1107] to learn an adaptive piecewise constant approximation defined on a binary sequential partition of the underlying domain, where the star discrepancy is adopted to measure the uniformity of particle distribution. However, the calculation of the star discrepancy is NP-hard and it does not satisfy the reflection invariance and rotation invariance either. To this end, we use the mixture discrepancy and the comparison of moments as a replacement of the star discrepancy, leading to the density estimation via mixture discrepancy based sequential partition (DSP-mix) and density estimation via moments based sequential partition (MSP), respectively. Both DSP-mix and MSP are computationally tractable and exhibit the reflection and rotation invariance. Numerical experiments in reconstructing the dd-D mixture of Gaussians and Betas with d=2,3,,6d=2, 3, \dots, 6 demonstrate that DSP-mix and MSP both run approximately ten times faster than DSP while maintaining the same accuracy.

View on arXiv
@article{lei2025_2504.01570,
  title={ Density estimation via mixture discrepancy and moments },
  author={ Zhengyang Lei and Sihong Shao },
  journal={arXiv preprint arXiv:2504.01570},
  year={ 2025 }
}
Comments on this paper