Spiked Covariance Estimation from Modulo-Reduced Measurements

Abstract

Consider the rank-1 spiked model: $\bf{X}=\sqrt{\nu}\xi \bf{u}+ \bf{Z}$, where $\nu$ is the spike intensity, $\bf{u}\in\mathbb{S}^{k-1}$ is an unknown direction and $\xi\sim \mathcal{N}(0,1),\bf{Z}\sim \mathcal{N}(\bf{0},\bf{I})$. Motivated by recent advances in analog-to-digital conversion, we study the problem of recovering $\bf{u}\in \mathbb{S}^{k-1}$ from $n$ i.i.d. modulo-reduced measurements $\bf{Y}=[\bf{X}]\mod \Delta$, focusing on the high-dimensional regime ($k\gg 1$). We develop and analyze an algorithm that, for most directions $\bf{u}$ and $\nu=\mathrm{poly}(k)$, estimates $\bf{u}$ to high accuracy using $n=\mathrm{poly}(k)$ measurements, provided that $\Delta\gtrsim \sqrt{\log k}$. Up to constants, our algorithm accurately estimates $\bf{u}$ at the smallest possible $\Delta$ that allows (in an information-theoretic sense) to recover $\bf{X}$ from $\bf{Y}$. A key step in our analysis involves estimating the probability that a line segment of length $\approx\sqrt{\nu}$ in a random direction $\bf{u}$ passes near a point in the lattice $\Delta \mathbb{Z}^k$. Numerical experiments show that the developed algorithm performs well even in a non-asymptotic setting.

Cite

Text

Romanov and Ordentlich. "Spiked Covariance Estimation from Modulo-Reduced Measurements." Artificial Intelligence and Statistics, 2022.

Markdown

[Romanov and Ordentlich. "Spiked Covariance Estimation from Modulo-Reduced Measurements." Artificial Intelligence and Statistics, 2022.](https://mlanthology.org/aistats/2022/romanov2022aistats-spiked/)

BibTeX

@inproceedings{romanov2022aistats-spiked,
  title     = {{Spiked Covariance Estimation from Modulo-Reduced Measurements}},
  author    = {Romanov, Elad and Ordentlich, Or},
  booktitle = {Artificial Intelligence and Statistics},
  year      = {2022},
  pages     = {1298-1320},
  volume    = {151},
  url       = {https://mlanthology.org/aistats/2022/romanov2022aistats-spiked/}
}