Introduction Package CircOutlier For Detection of Outliers in Circular-Circular Regression
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Abstract:
One of the most important problem in any statistical analysis is the existence of unexpected observations. Some observations are not a part of the study and are known as outliers. Studies have shown that the outliers affect to the performance of statistical standard methods in models and predictions. The point of this work is to provide a couple of statistical package in R software to identify outliers in circular-circular regression which is written by the author, we introduce a brief explanation about the circular data and circular regression, then the packages in R for circular regression introduced. After wand, the functions in the package CircOutlier will be described.
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Journal title
volume 20 issue 2
pages 11- 16
publication date 2015-10
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