Abstract

Outliers are observations that have extreme value relations. Herewith leverage is a measure of how an independent variable deviates from its mean. An observation with an extreme value on a predictor variable is a point with high leverage. The presence of outliers can lead to inflated error rates and substantial distortions of parameter and statistic estimates when using either parametric or nonparametric tests. Casual observation of the literature suggests that researchers rarely report checking for outliers of any sort and taking remedial measures for outliers. Outliers can have positive deleterious effects on statistical analyses. For instance, they serve to increase error variance and reduce the power of statistical tests; they can decrease normality, altering the odds of making both Type I and Type II errors for non- randomly distributed; and they can seriously bias or influence estimates that may be of substantive interest. These outliers are cased from incorrect recording data, intentional or motivated mis-reporting, sampling error and Outliers as legitimate cases sampled from the correct population. According to some literatures; Point outliers, Contextual Outliers and Collective Outliers are the three types of outliers. Robust regression estimators can be a powerful tool for detection and identifying outliers in complicated data sets. Robust regression, deals with the problem of outliers in a regression and produce different coefficient estimates than OLS does.

Highlights

  • “Outliers” are unusual data values that occur almost in all research projects involving data collection

  • We argue that what to do depends in large part on why an outlier is in the data in the first place

  • Robust regression is applicable on different statistical software

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Summary

Introduction

“Outliers” are unusual data values that occur almost in all research projects involving data collection. Outliers are observations that have extreme value relations. Beside this it is better to point out some definition about terms which is going hand by hand with outlier as follows. An observation with an extreme value on a predictor variable is a point with high leverage. Influence An observation is said to be in influential if removing that observation substantially changes the estimation of the coefficients. The presence of outliers can lead to inflated error rates and substantial distortions of parameter and statistic estimates when using either parametric or nonparametric tests. Outliers can have deleterious effects on statistical analyses. They generally serve to increase error variance and reduce the power of statistical tests.

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