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  1. 30 Νοε 2021 · It’s important to carefully identify potential outliers in your dataset and deal with them in an appropriate manner for accurate results. There are four ways to identify outliers: Sorting method. Data visualization method. Statistical tests (z scores) Interquartile range method.

  2. 1 Ιαν 2004 · The goal of this paper is to summarize the various potential causes of extreme scores in a data set (e.g., data recording or entry errors, motivated mis-reporting, sampling errors, and...

  3. 4 Οκτ 2022 · Example: Using the interquartile range to find outliers. Dealing with outliers. Frequently asked questions. What are outliers? Outliers are values at the extreme ends of a dataset. Some outliers represent true values from natural variation in the population.

  4. 1 Ιαν 2005 · This paper discusses as its primary research question the viability of using the Mahalanobis Distance as a multivariate method for detecting outliers in an industrial setting.

  5. 1 Αυγ 2021 · An outlier is a data value that is so unlike other values in the sample that ignoring it can lead to significantly incorrect estimates (Chambers, Hentges, & Zhao, 2004). Outliers have the potential to exert a disproportionately large influence on a statistical analysis (i.e., high leverage).

  6. 14 Ιαν 2013 · The presence of outliers, which are data points that deviate markedly from others, is one of the most enduring and pervasive methodological challenges in organizational science research. We provide evidence that different ways of defining, identifying, and handling outliers alter substantive research conclusions.

  7. 1 Απρ 2013 · We offer guidelines, including decision-making trees, that researchers can follow to define, identify, and handle error, interesting, and influential (i.e., model fit and prediction) outliers.