Litcius/Paper detail

Bayesian Confidence Intervals for Coefficients of Variation of PM10 Dispersion

Warisa Thangjai, Sa‐Aat Niwitpong, Suparat Niwitpong

2021Emerging Science Journal13 citationsDOIOpen Access PDF

Abstract

Herein, we propose the Bayesian approach for constructing the confidence intervals for both the coefficient of variation of a log-normal distribution and the difference between the coefficients of variation of two log-normal distributions. For the first case, the Bayesian approach was compared with large-sample, Chi-squared, and approximate fiducial approaches via Monte Carlo simulation. For the second case, the Bayesian approach was compared with the method of variance estimates recovery (MOVER), modified MOVER, and approximate fiducial approaches using Monte Carlo simulation. The results show that the Bayesian approach provided the best approach for constructing the confidence intervals for both the coefficient of variation of a log-normal distribution and the difference between the coefficients of variation of two log-normal distributions. To illustrate the performances of the confidence limit construction approaches with real data, they were applied to analyze real PM10 datasets from the Nan and Chiang Mai provinces in Thailand, the results of which are in agreement with the simulation results. Doi: 10.28991/esj-2021-01264 Full Text: PDF

Topics & Concepts

Confidence intervalStatisticsBayesian probabilityMonte Carlo methodMathematicsCoefficient of variationFiducial markerDispersion (optics)Log-normal distributionVariance (accounting)Normal distributionBayesian averageBayesian inferenceComputer scienceBayesian hierarchical modelingArtificial intelligencePhysicsAccountingOpticsBusinessStatistical Methods and Bayesian InferenceAir Quality Monitoring and ForecastingAir Quality and Health Impacts