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depscope/cran/envoutliers

envoutliers

cranv1.1.0

Methods for Identification of Outliers in Environmental Data. Three semi-parametric methods for detection of outliers in environmental data based on kernel regression and subsequent analysis of smoothing residuals. The first method (Campulova, Michalek, Mikuska and Bokal (2018) <DOI: 10.1002/cem.2997>) analyzes the residuals using changepoint analysis, the sec

License GPL-2strong copyleft0 versions1 maintainers9 deps72 weekly dl
https://CRAN.R-project.org/package=envoutliers
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First published · 2020-05-07 16:26:37

Last updated · 2020-05-07T14:20:02+00:00

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