nparLD: An R Software Package for the Nonparametric Analysis of Longitudinal Data in Factorial Experiments

2012-09 | journal article. A publication with affiliation to the University of Göttingen.

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​nparLD: An R Software Package for the Nonparametric Analysis of Longitudinal Data in Factorial Experiments​
Noguchi, K.; Gel, Y. R.; Brunner, E. & Konietschke, F.​ (2012) 
Journal of Statistical Software50(12).​

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Authors
Noguchi, Kimihiro; Gel, Yulia R.; Brunner, Edgar; Konietschke, Frank
Abstract
Longitudinal data from factorial experiments frequently arise in various elds of study, ranging from medicine and biology to public policy and sociology. In most practical situations, the distribution of observed data is unknown and there may exist a number of atypical measurements and outliers. Hence, use of parametric and semiparametric procedures that impose restrictive distributional assumptions on observed longitudinal samples becomes questionable. This, in turn, has led to a substantial demand for statistical procedures that enable us to accurately and reliably analyze longitudinal measurements in factorial experiments with minimal conditions on available data, and robust nonparametric methodology o ering such a possibility becomes of particular practical importance. In this article, we introduce a new R package nparLD which provides statisticians and researchers from other disciplines an easy and user-friendly access to the most up-todate robust rank-based methods for the analysis of longitudinal data in factorial settings. We illustrate the implemented procedures by case studies from dentistry, biology, and medicine.
Issue Date
September-2012
Journal
Journal of Statistical Software 
Organization
Universitätsmedizin Göttingen
ISSN
1548-7660
Extent
23
Language
English

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