Chapter 4 Exploratory Data Analysis
determining relationships among the explanatory variables, and ... of the areas of a distribution that would commonly occur. This can also be thought of as sample data values which correspond to areas of the population pdf (or pmf) with low density (or probability). The de nition of \outlier" for standard boxplots is described below (see4.3.3). ...
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