Direct Data Manipulation for Local Decision Analysis as Applied to the Problem of Arsenic in Drinking Water from Tube Wells in Bangladesh
- 27 December 2004
- journal article
- Published by Wiley in Risk Analysis
- Vol. 24 (6), 1597-1612
- https://doi.org/10.1111/j.0272-4332.2004.00553.x
Abstract
A wide variety of tools are available, both parametric and nonparametric, for analyzing spatial data. However, it is not always clear how to translate statistical inferences into decision recommendations. This article explores the possibilities of estimating the effects of decision options using very direct manipulation of data, bypassing formal statistical analysis. We illustrate with the application that motivated this research, a study of arsenic in drinking water in nearly 5,000 wells in a small area in rural Bangladesh. We estimate the potential benefits of two possible remedial actions: (1) recommendations that people switch to nearby wells with lower arsenic levels; and (2) drilling new community wells. We use simple nonparametric clustering methods and estimate uncertainties using cross-validation.Keywords
This publication has 13 references indexed in Scilit:
- Arsenic in groundwater in Bangladesh: A geostatistical and epidemiological framework for evaluating health effects and potential remediesWater Resources Research, 2003
- Spatial variability of arsenic in 6000 tube wells in a 25 km2 area of BangladeshWater Resources Research, 2003
- A review of the source, behaviour and distribution of arsenic in natural watersApplied Geochemistry, 2002
- Spatial Optimization ModelsPublished by Elsevier ,2001
- Associations Between Drinking Water and Urinary Arsenic Levels and Skin Lesions in BangladeshJournal of Occupational and Environmental Medicine, 2000
- Analysis of Local Decisions Using Hierarchical Modeling, Applied to Home Radon Measurement and RemediationStatistical Science, 1999
- Statistics for Spatial DataWiley Series in Probability and Statistics, 1993
- Analysis and modeling of fiber clustering in composites using N-tuplesScripta Metallurgica et Materialia, 1993
- Estimates of Income for Small Places: An Application of James-Stein Procedures to Census DataJournal of the American Statistical Association, 1979
- Algorithm AS 136: A K-Means Clustering AlgorithmJournal of the Royal Statistical Society Series C: Applied Statistics, 1979