A heuristic independent particle approximation to determinantal point processes

09/01/2020
by   Lexing Ying, et al.
0

A determinantal point process is a stochastic point process that is commonly used to capture negative correlations. It has become increasingly popular in machine learning in recent years. Sampling a determinantal point process however remains a computationally intensive task. This note introduces a heuristic independent particle approximation to determinantal point processes. The approximation is based on the physical intuition of fermions and is implemented using standard numerical linear algebra routines. Sampling from this independent particle approximation can be performed at a negligible cost. Numerical results are provided to demonstrate the performance of the proposed algorithm.

READ FULL TEXT

page 5

page 6

research
06/02/2018

Rejection Sampling for Tempered Levy Processes

We extend the idea of tempering stable Levy processes to tempering more ...
research
06/25/2018

Learning dynamical systems with particle stochastic approximation EM

We present the particle stochastic approximation EM (PSAEM) algorithm fo...
research
05/07/2020

Determinantal Point Processes in Randomized Numerical Linear Algebra

Randomized Numerical Linear Algebra (RandNLA) uses randomness to develop...
research
03/15/2022

Regenerative Particle Thompson Sampling

This paper proposes regenerative particle Thompson sampling (RPTS), a fl...
research
04/08/2022

Tensor approximation of the self-diffusion matrix of tagged particle processes

The objective of this paper is to investigate a new numerical method for...
research
11/08/2018

Fast determinantal point processes via distortion-free intermediate sampling

Given a fixed n× d matrix X, where n≫ d, we study the complexity of samp...
research
09/12/2016

Optimal Encoding and Decoding for Point Process Observations: an Approximate Closed-Form Filter

The process of dynamic state estimation (filtering) based on point proce...

Please sign up or login with your details

Forgot password? Click here to reset