Chapter 4 Exploratory Data Analysis
Exploratory Data Analysis A rst look at the data. As mentioned in Chapter 1, exploratory data analysis or \EDA" is a critical rst step in analyzing the data from an experiment. ... Many of the sample’s distributional characteristics are seen qualitatively in the univariate graphical EDA technique of a histogram (see4.3.1). In most situations it
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