What are “fringeliers”?












4












$begingroup$


I recently received a reviewer comment from a journal submission that asked me to




report how I dealt with outliers and fringeliers.




I had not heard of the term "fringeliers" and when I googled, there were some articles, but no concise definition. So I thought it would be good to have a question like this that could clarify what "fringeliers" are and provide a definition both for myself and future people asking the same question.










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$endgroup$

















    4












    $begingroup$


    I recently received a reviewer comment from a journal submission that asked me to




    report how I dealt with outliers and fringeliers.




    I had not heard of the term "fringeliers" and when I googled, there were some articles, but no concise definition. So I thought it would be good to have a question like this that could clarify what "fringeliers" are and provide a definition both for myself and future people asking the same question.










    share|cite|improve this question











    $endgroup$















      4












      4








      4





      $begingroup$


      I recently received a reviewer comment from a journal submission that asked me to




      report how I dealt with outliers and fringeliers.




      I had not heard of the term "fringeliers" and when I googled, there were some articles, but no concise definition. So I thought it would be good to have a question like this that could clarify what "fringeliers" are and provide a definition both for myself and future people asking the same question.










      share|cite|improve this question











      $endgroup$




      I recently received a reviewer comment from a journal submission that asked me to




      report how I dealt with outliers and fringeliers.




      I had not heard of the term "fringeliers" and when I googled, there were some articles, but no concise definition. So I thought it would be good to have a question like this that could clarify what "fringeliers" are and provide a definition both for myself and future people asking the same question.







      terminology outliers






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      share|cite|improve this question













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      edited 52 mins ago









      kjetil b halvorsen

      29.9k980218




      29.9k980218










      asked 2 hours ago









      Jeromy AnglimJeromy Anglim

      32.6k18124228




      32.6k18124228






















          1 Answer
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          $begingroup$

          Fringeliers appears to be defined as a less extreme kind of outlier. I.e., data on the fringes of the distribution.



          For example, were you to define a cutoff for outliers, fringeliers might be operationalised to be those values that are close to either side of the cutoff (e.g., for a 3 SD cutoff, between 2.7 and 3.3 SD from the mean).



          Osborne and Overbay (2008) write the following:




          Although definitions vary, an outlier is generally considered to be a
          data point that is far outside the norm for a variable or population
          (e.g., Jarrell, 1994; Rasmussen, 1988; Stevens, 1984). Hawkins (1980)
          described an outlier as an observation that “deviates so much from
          other observations as to arouse suspicions that it was generated by a
          different mechanism” (p. 1). Outliers have also been defined as values
          that are “dubious in the eyes of the researcher” (Dixon, 1950, p. 488)
          and contaminants (Wainer, 1976).




          And go on to introduce the term "fringelier" from Wainer (1976)




          Wainer (1976) also introduced the concept of the “fringelier,”
          referring to “unusual events which occur more often than seldom” (p.
          286). These points lie near three standard deviations from the mean and hence may have a disproportionately strong influence on parameter estimates, yet are not as obvious or easily identified as ordinary outliers due to their relative proximity to the distribution center.




          Some examples:



          In some contexts, outliers suggest that the data is invalid. For example, if a man's height is recorded as 8 foot tall (say 6.5 SD above the mean), this is probably an invalid measurement. In contrast, if someone's height is recorded as 6 foot 10 inches tall (3 SD above the mean - a fringelier), this might be a valid measurement, but equally, it might suggest a problem with measurement as this is pretty rare. The point is that determining whether a value is invalid gets harder, the less extreme the value becomes.



          In other contexts, outliers are a concern because they have an excessive influence on parameter estimates, particularly when using standard statistical methods using least squares and so on. Thus, fringeliers may have greater impact than some most cases, but decisions about whether to retain the data or not for modelling purposes may be less clear.



          References




          • Osborne, J. & Overbay, A. (2008). Best practices in data cleaning: how outliers and “fringeliers” can increase error rates and decrease the quality and precision of your results. In Osborne, J. Best practices in quantitative methods (pp. 205-213). Thousand Oaks, CA: SAGE Publications, Inc. doi: 10.4135/9781412995627

          • Wainer, H.Robust statistics: A survey and some prescriptions1(4)285-312(1976).






          share|cite|improve this answer









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            $begingroup$

            Fringeliers appears to be defined as a less extreme kind of outlier. I.e., data on the fringes of the distribution.



            For example, were you to define a cutoff for outliers, fringeliers might be operationalised to be those values that are close to either side of the cutoff (e.g., for a 3 SD cutoff, between 2.7 and 3.3 SD from the mean).



            Osborne and Overbay (2008) write the following:




            Although definitions vary, an outlier is generally considered to be a
            data point that is far outside the norm for a variable or population
            (e.g., Jarrell, 1994; Rasmussen, 1988; Stevens, 1984). Hawkins (1980)
            described an outlier as an observation that “deviates so much from
            other observations as to arouse suspicions that it was generated by a
            different mechanism” (p. 1). Outliers have also been defined as values
            that are “dubious in the eyes of the researcher” (Dixon, 1950, p. 488)
            and contaminants (Wainer, 1976).




            And go on to introduce the term "fringelier" from Wainer (1976)




            Wainer (1976) also introduced the concept of the “fringelier,”
            referring to “unusual events which occur more often than seldom” (p.
            286). These points lie near three standard deviations from the mean and hence may have a disproportionately strong influence on parameter estimates, yet are not as obvious or easily identified as ordinary outliers due to their relative proximity to the distribution center.




            Some examples:



            In some contexts, outliers suggest that the data is invalid. For example, if a man's height is recorded as 8 foot tall (say 6.5 SD above the mean), this is probably an invalid measurement. In contrast, if someone's height is recorded as 6 foot 10 inches tall (3 SD above the mean - a fringelier), this might be a valid measurement, but equally, it might suggest a problem with measurement as this is pretty rare. The point is that determining whether a value is invalid gets harder, the less extreme the value becomes.



            In other contexts, outliers are a concern because they have an excessive influence on parameter estimates, particularly when using standard statistical methods using least squares and so on. Thus, fringeliers may have greater impact than some most cases, but decisions about whether to retain the data or not for modelling purposes may be less clear.



            References




            • Osborne, J. & Overbay, A. (2008). Best practices in data cleaning: how outliers and “fringeliers” can increase error rates and decrease the quality and precision of your results. In Osborne, J. Best practices in quantitative methods (pp. 205-213). Thousand Oaks, CA: SAGE Publications, Inc. doi: 10.4135/9781412995627

            • Wainer, H.Robust statistics: A survey and some prescriptions1(4)285-312(1976).






            share|cite|improve this answer









            $endgroup$


















              4












              $begingroup$

              Fringeliers appears to be defined as a less extreme kind of outlier. I.e., data on the fringes of the distribution.



              For example, were you to define a cutoff for outliers, fringeliers might be operationalised to be those values that are close to either side of the cutoff (e.g., for a 3 SD cutoff, between 2.7 and 3.3 SD from the mean).



              Osborne and Overbay (2008) write the following:




              Although definitions vary, an outlier is generally considered to be a
              data point that is far outside the norm for a variable or population
              (e.g., Jarrell, 1994; Rasmussen, 1988; Stevens, 1984). Hawkins (1980)
              described an outlier as an observation that “deviates so much from
              other observations as to arouse suspicions that it was generated by a
              different mechanism” (p. 1). Outliers have also been defined as values
              that are “dubious in the eyes of the researcher” (Dixon, 1950, p. 488)
              and contaminants (Wainer, 1976).




              And go on to introduce the term "fringelier" from Wainer (1976)




              Wainer (1976) also introduced the concept of the “fringelier,”
              referring to “unusual events which occur more often than seldom” (p.
              286). These points lie near three standard deviations from the mean and hence may have a disproportionately strong influence on parameter estimates, yet are not as obvious or easily identified as ordinary outliers due to their relative proximity to the distribution center.




              Some examples:



              In some contexts, outliers suggest that the data is invalid. For example, if a man's height is recorded as 8 foot tall (say 6.5 SD above the mean), this is probably an invalid measurement. In contrast, if someone's height is recorded as 6 foot 10 inches tall (3 SD above the mean - a fringelier), this might be a valid measurement, but equally, it might suggest a problem with measurement as this is pretty rare. The point is that determining whether a value is invalid gets harder, the less extreme the value becomes.



              In other contexts, outliers are a concern because they have an excessive influence on parameter estimates, particularly when using standard statistical methods using least squares and so on. Thus, fringeliers may have greater impact than some most cases, but decisions about whether to retain the data or not for modelling purposes may be less clear.



              References




              • Osborne, J. & Overbay, A. (2008). Best practices in data cleaning: how outliers and “fringeliers” can increase error rates and decrease the quality and precision of your results. In Osborne, J. Best practices in quantitative methods (pp. 205-213). Thousand Oaks, CA: SAGE Publications, Inc. doi: 10.4135/9781412995627

              • Wainer, H.Robust statistics: A survey and some prescriptions1(4)285-312(1976).






              share|cite|improve this answer









              $endgroup$
















                4












                4








                4





                $begingroup$

                Fringeliers appears to be defined as a less extreme kind of outlier. I.e., data on the fringes of the distribution.



                For example, were you to define a cutoff for outliers, fringeliers might be operationalised to be those values that are close to either side of the cutoff (e.g., for a 3 SD cutoff, between 2.7 and 3.3 SD from the mean).



                Osborne and Overbay (2008) write the following:




                Although definitions vary, an outlier is generally considered to be a
                data point that is far outside the norm for a variable or population
                (e.g., Jarrell, 1994; Rasmussen, 1988; Stevens, 1984). Hawkins (1980)
                described an outlier as an observation that “deviates so much from
                other observations as to arouse suspicions that it was generated by a
                different mechanism” (p. 1). Outliers have also been defined as values
                that are “dubious in the eyes of the researcher” (Dixon, 1950, p. 488)
                and contaminants (Wainer, 1976).




                And go on to introduce the term "fringelier" from Wainer (1976)




                Wainer (1976) also introduced the concept of the “fringelier,”
                referring to “unusual events which occur more often than seldom” (p.
                286). These points lie near three standard deviations from the mean and hence may have a disproportionately strong influence on parameter estimates, yet are not as obvious or easily identified as ordinary outliers due to their relative proximity to the distribution center.




                Some examples:



                In some contexts, outliers suggest that the data is invalid. For example, if a man's height is recorded as 8 foot tall (say 6.5 SD above the mean), this is probably an invalid measurement. In contrast, if someone's height is recorded as 6 foot 10 inches tall (3 SD above the mean - a fringelier), this might be a valid measurement, but equally, it might suggest a problem with measurement as this is pretty rare. The point is that determining whether a value is invalid gets harder, the less extreme the value becomes.



                In other contexts, outliers are a concern because they have an excessive influence on parameter estimates, particularly when using standard statistical methods using least squares and so on. Thus, fringeliers may have greater impact than some most cases, but decisions about whether to retain the data or not for modelling purposes may be less clear.



                References




                • Osborne, J. & Overbay, A. (2008). Best practices in data cleaning: how outliers and “fringeliers” can increase error rates and decrease the quality and precision of your results. In Osborne, J. Best practices in quantitative methods (pp. 205-213). Thousand Oaks, CA: SAGE Publications, Inc. doi: 10.4135/9781412995627

                • Wainer, H.Robust statistics: A survey and some prescriptions1(4)285-312(1976).






                share|cite|improve this answer









                $endgroup$



                Fringeliers appears to be defined as a less extreme kind of outlier. I.e., data on the fringes of the distribution.



                For example, were you to define a cutoff for outliers, fringeliers might be operationalised to be those values that are close to either side of the cutoff (e.g., for a 3 SD cutoff, between 2.7 and 3.3 SD from the mean).



                Osborne and Overbay (2008) write the following:




                Although definitions vary, an outlier is generally considered to be a
                data point that is far outside the norm for a variable or population
                (e.g., Jarrell, 1994; Rasmussen, 1988; Stevens, 1984). Hawkins (1980)
                described an outlier as an observation that “deviates so much from
                other observations as to arouse suspicions that it was generated by a
                different mechanism” (p. 1). Outliers have also been defined as values
                that are “dubious in the eyes of the researcher” (Dixon, 1950, p. 488)
                and contaminants (Wainer, 1976).




                And go on to introduce the term "fringelier" from Wainer (1976)




                Wainer (1976) also introduced the concept of the “fringelier,”
                referring to “unusual events which occur more often than seldom” (p.
                286). These points lie near three standard deviations from the mean and hence may have a disproportionately strong influence on parameter estimates, yet are not as obvious or easily identified as ordinary outliers due to their relative proximity to the distribution center.




                Some examples:



                In some contexts, outliers suggest that the data is invalid. For example, if a man's height is recorded as 8 foot tall (say 6.5 SD above the mean), this is probably an invalid measurement. In contrast, if someone's height is recorded as 6 foot 10 inches tall (3 SD above the mean - a fringelier), this might be a valid measurement, but equally, it might suggest a problem with measurement as this is pretty rare. The point is that determining whether a value is invalid gets harder, the less extreme the value becomes.



                In other contexts, outliers are a concern because they have an excessive influence on parameter estimates, particularly when using standard statistical methods using least squares and so on. Thus, fringeliers may have greater impact than some most cases, but decisions about whether to retain the data or not for modelling purposes may be less clear.



                References




                • Osborne, J. & Overbay, A. (2008). Best practices in data cleaning: how outliers and “fringeliers” can increase error rates and decrease the quality and precision of your results. In Osborne, J. Best practices in quantitative methods (pp. 205-213). Thousand Oaks, CA: SAGE Publications, Inc. doi: 10.4135/9781412995627

                • Wainer, H.Robust statistics: A survey and some prescriptions1(4)285-312(1976).







                share|cite|improve this answer












                share|cite|improve this answer



                share|cite|improve this answer










                answered 2 hours ago









                Jeromy AnglimJeromy Anglim

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