FLAG_OUTLIERS
Returns a new column containing a customizable value in each row that indicates if the source column value is an outlier.
Parameters
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            sourceColumn– Specifies the name of an existing numeric column that might contain outliers.
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            targetColumn– Specifies the name of a new column where the results of the outlier evaluation strategy is to be inserted.
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            outlierStrategy– Specifies the approach to use in detecting outliers. Valid values include the following:- 
                    Z_SCORE– Identifies a value as an outlier when it deviates from the mean by more than the standard deviation threshold.
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                    MODIFIED_Z_SCORE– Identifies a value as an outlier when it deviates from the median by more than the median absolute deviation threshold.
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                    IQR– Identifies a values as an outlier when it falls beyond the first and last quartile of column data. The interquartile range (IQR) measures where the middle 50% of the data points are.
 
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            threshold– Specifies the threshold value to use when detecting outliers. ThesourceColumnvalue is identified as an outlier if the score that's calculated with theoutlierStrategyexceeds this number. The default is 3.
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            trueString– Specifies the string value to use if an outlier is detected. The default is "True".
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            falseString– Specifies the string value to use if no outlier is detected. The default is "False".
The following examples display syntax for a single RecipeAction operation. A recipe contains at least one RecipeStep operation, and a recipe step contains at least one recipe action. A recipe action runs the data transform that you specify. A group of recipe actions run in sequential order to create the final dataset.