ArXiv TLDR

When do trajectories matter? Identifiability analysis for stochastic transport phenomena

🐦 Tweet
2604.15598

Matthew J Simpson, Michael J Plank

nlin.CGq-bio.QMstat.AP

TLDR

This paper analyzes parameter identifiability in stochastic diffusion models, showing trajectory data often resolves non-identifiability issues faced by count data.

Key contributions

  • Examines parameter identifiability for lattice-based random walk models.
  • Compares the effectiveness of count data versus individual trajectory data for parameter estimation.
  • Demonstrates that trajectory data can alleviate structural non-identifiability issues from count data.
  • Explores how different experimental designs and trajectory collection protocols impact inferential precision.

Why it matters

This work is crucial for designing effective experiments in stochastic transport phenomena. By highlighting the benefits of trajectory data, it guides researchers in collecting more informative data, improving model parameter estimation and predictive accuracy.

Original Abstract

Stochastic models of diffusion are routinely used to study dispersal of populations, including populations of animals, plants, seeds and cells. Advances in imaging and field measurement technologies mean that data are often collected across a range of scales, including count data collected across a series of fixed sampling regions to characterize population-level dispersal, as well as individual trajectory data to examine at the motion of individuals within a diffusive population. In this work we consider a lattice-based random walk model and examine the extent to which model parameters can be determined by collecting count data and/or trajectory data. Our analysis combines agent-based stochastic simulations, mean-field partial differential equation approximations, likelihood-based estimation, identifiability analysis, and model-based prediction. These combined tools reveal that working with count data alone can sometimes lead to challenges involving structural non-identifiability that can be alleviated by collecting trajectory data. Furthermore, these tools allow us to explore how different experimental designs impact inferential precision by comparing how different trajectory data collection protocols affects practical identifiability. Open source implementations of all algorithms used in this work are available on GitHub.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.