Literature DB >> 26850713

Permutation/randomization-based inference for environmental data.

R Christopher Spicer1, Harry J Gangloff2.   

Abstract

Quantitative inference from environmental contaminant data is almost exclusively from within the classic Neyman/Pearson (N/P) hypothesis-testing model, by which the mean serves as the fundamental quantitative measure, but which is constrained by random sampling and the assumption of normality in the data. Permutation/randomization-based inference originally forwarded by R. A. Fisher derives probability directly from the proportion of the occurrences of interest and is not dependent upon the distribution of data or random sampling. Foundationally, the underlying logic and the interpretation of the significance of the two models vary, but inference using either model can often be successfully applied. However, data examples from airborne environmental fungi (mold), asbestos in settled dust, and 1,2,3,4-tetrachlorobenzene (TeCB) in soil demonstrate potentially misleading inference using traditional N/P hypothesis testing based upon means/variance compared to permutation/randomization inference using differences in frequency of detection (Δf d). Bootstrapping and permutation testing, which are extensions of permutation/randomization, confirm calculated p values via Δf d and should be utilized to verify the appropriateness of a given data analysis by either model.

Entities:  

Keywords:  Detection frequency; Distribution; Inference; Permutation; Randomization

Mesh:

Substances:

Year:  2016        PMID: 26850713     DOI: 10.1007/s10661-016-5090-0

Source DB:  PubMed          Journal:  Environ Monit Assess        ISSN: 0167-6369            Impact factor:   2.513


  11 in total

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Authors:  F Di Nocera; F Ferlazzo
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Authors:  R C Spicer; H J Gangloff
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Journal:  Stat Med       Date:  2001 Sep 15-30       Impact factor: 2.373

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5.  Bioaerosol data distribution: probability and implications for sampling in evaluating problematic buildings.

Authors:  R Christopher Spicer; Harry J Gangloff
Journal:  Appl Occup Environ Hyg       Date:  2003-08

6.  Verifying interpretive criteria for bioaerosol data using (bootstrap) Monte Carlo techniques.

Authors:  R Christopher Spicer; Harry Gangloff
Journal:  J Occup Environ Hyg       Date:  2008-02       Impact factor: 2.155

7.  Professional judgment and the interpretation of viable mold air sampling data.

Authors:  David Johnson; David Thompson; Rodney Clinkenbeard; Jason Redus
Journal:  J Occup Environ Hyg       Date:  2008-10       Impact factor: 2.155

8.  Judgment under Uncertainty: Heuristics and Biases.

Authors:  A Tversky; D Kahneman
Journal:  Science       Date:  1974-09-27       Impact factor: 47.728

9.  Statistical Inference: The Big Picture.

Authors:  Robert E Kass
Journal:  Stat Sci       Date:  2011-02-01       Impact factor: 2.901

10.  P value and the theory of hypothesis testing: an explanation for new researchers.

Authors:  David Jean Biau; Brigitte M Jolles; Raphaël Porcher
Journal:  Clin Orthop Relat Res       Date:  2010-03       Impact factor: 4.176

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