Code repository and Bookdown project for Online Companion to Network Science in Archaeology by Tom Brughmans and Matthew A. Peeples (Cambridge Manuals in Archaeology)
-
Updated
Mar 8, 2024 - R
Code repository and Bookdown project for Online Companion to Network Science in Archaeology by Tom Brughmans and Matthew A. Peeples (Cambridge Manuals in Archaeology)
Univariate and multivariate time series forecasting, with uncertainty quantification (Python & R)
The R code and datasets for the paper "Random Forest Prediction Intervals"
The Rainfall Intensity Data Series can be Fitted to Eight Different PDFs and the Intensity-Duration-Frequency Curves are Computed
Travel time prediction from GPS observations using an HMM
R codes for the example in the paper titled "A theoretical framework for state-transition cohort model in health decision analysis," https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0205543
R code for the case study in the manuscript titled "Probability bound analysis: A novel approach for quantifying parameter uncertainty in decision-analytic modeling and cost-effectiveness analysis."
MOBASY energy performance calculation
This R package allows the emulation using a mesh-clustered Gaussian process (mcGP) model for partial differential equation (PDE) systems.
Estimating route conditional travel time and its uncertainty.
Performing a Sobol global sensitivity analysis on a flood risk model in Selinsgrove, PA
This instruction aims to reproduce the results in the paper “Mesh-clustered Gaussian process emulator for partial differential equation boundary value problems”(2024) to appear in Technometrics.
Code and documentation from density UQ review paper.
Implementation of the Polya completion algorithm for uncertainty restoration of the marginal MDP model
Simulation Uncertainty Quantification Querying
Scripts to explore calculation, interpretation and visualisation of uncertainty related to indicators based on biodiversity data cubes
Uncertainty Quantification Management System
Add a description, image, and links to the uncertainty-quantification topic page so that developers can more easily learn about it.
To associate your repository with the uncertainty-quantification topic, visit your repo's landing page and select "manage topics."