Litcius/Paper detail

<b>sensobol</b>: An <i>R</i> Package to Compute Variance-Based Sensitivity Indices

Arnald Puy, Samuele Lo Piano, Andrea Saltelli, Simon A. Levin

2022Journal of Statistical Software81 citationsDOIOpen Access PDF

Abstract

The R package sensobol provides several functions to conduct variance-based uncertainty and sensitivity analysis, from the estimation of sensitivity indices to the visual representation of the results. It implements several state-of-the-art first and total-order estimators and allows the computation of up to fourth-order effects, as well as of the approximation error, in a swift and user-friendly way. Its flexibility makes it also appropriate for models with either a scalar or a multivariate output. We illustrate its functionality by conducting a variance-based sensitivity analysis of three classic models: the Sobol' (1998) G function, the logistic population growth model of Verhulst (1845), and the spruce budworm and forest model of

Topics & Concepts

Sobol sequenceSensitivity (control systems)EstimatorVariance (accounting)Applied mathematicsScalar (mathematics)Representation (politics)MathematicsStatisticsMultivariate statisticsComputer scienceVariance-based sensitivity analysisFlexibility (engineering)EconometricsOne-way analysis of varianceMonte Carlo methodAnalysis of variancePolitical scienceElectronic engineeringAccountingBusinessGeometryLawEngineeringPoliticsForest ecology and managementProbabilistic and Robust Engineering DesignEcology and Vegetation Dynamics Studies
<b>sensobol</b>: An <i>R</i> Package to Compute Variance-Based Sensitivity Indices | Litcius