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Updated: Jun 7, 2025

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The nhppp package for simulating non-homogeneous Poisson point processes in R.

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The nhppp R package efficiently simulates non-homogeneous Poisson point processes (NHPPPs) for discrete event and statistical simulations. It offers fast, memory-efficient event time sampling using three proven algorithms.

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Area of Science:

  • Computational Statistics
  • Simulation Methods
  • Point Process Theory

Background:

  • Discrete event and statistical simulations require efficient methods for generating event times.
  • Non-homogeneous Poisson point processes (NHPPPs) are fundamental models for event occurrences over time.
  • Existing simulation methods for NHPPPs can be computationally intensive or memory-demanding.

Purpose of the Study:

  • To introduce the nhppp R package for fast and memory-efficient simulation of one-dimensional NHPPPs.
  • To provide researchers with reliable tools for sampling event times in complex simulations.
  • To implement and evaluate three distinct, provably correct NHPPP simulation algorithms.

Main Methods:

  • Time-transformation of a standard homogeneous Poisson process using the inverse of the integrated intensity function.
  • Generation of Poisson-distributed order statistics from a specified density function.
  • Thinning of a majorizing NHPPP employing an acceptance-rejection scheme.

Main Results:

  • The nhppp package provides functions based on three theoretically sound algorithms for NHPPP event simulation.
  • Numerical accuracy and time performance of the implemented algorithms were rigorously studied.
  • The package demonstrates efficient performance with a small memory footprint.

Conclusions:

  • The nhppp R package offers a valuable, efficient, and accurate solution for simulating NHPPPs.
  • It facilitates the integration of NHPPP event generation into discrete event and statistical simulations.
  • The package includes reproducible examples, promoting ease of use and adoption.