On two ways to use determinantal point processes for Monte Carlo integration
Université de Lille · Centre de Recherche en Informatique · +2 more institutions
Abstract
The standard Monte Carlo estimator $\widehat{I}_N^{\mathrm{MC}}$ of $\int fdω$ relies on independent samples from $ω$ and has variance of order $1/N$. Replacing the samples with a determinantal point process (DPP), a repulsive distribution, makes the estimator consistent, with variance rates that depend on how the DPP is adapted to $f$ and $ω$. We examine two existing DPP-based estimators: one by Bardenet & Hardy (2020) with a rate of $\mathcal{O}(N^{-(1+1/d)})$ for smooth $f$, but relying on a fixed DPP. The other, by Ermakov & Zolotukhin (1960), is unbiased with rate of order $1/N$, like Monte Carlo, but its DPP is tailored to $f$. We revisit these estimators, generalize them to continuous settings,…
Citation impact
- FWCI
- —
- Percentile
- —
- References
- 28
Authors
3Topics & keywords
- Estimator
- Monte Carlo method
- Kernel (algebra)
- Monte Carlo integration
- Mathematics
- Applied mathematics
- Hybrid Monte Carlo
- Determinantal point process