Comparing Quantitative Distributions: Apply It 2

  • Compare data sets by describing their shapes, centers, spreads, and outliers

Let’s analyze the salary data set in the statistical tool and create side-by-side dotplots or histograms.

By displaying the data set in side-by-side dotplots or histograms, we can describe and compare features of the distribution of the quantitative variable. The features used to describe the distribution of a quantitative variable are the shape, center, spread, and presence of outliers.

How do we decide when to use a dotplot and when to use a histogram? There are no rules here. Each type of graph can highlight different aspects of the data.

  • Here are some observations about dotplots:
    • Individual variable values are visible, particularly when the data set is small.
    • Descriptions of shape, center, and spread are not affected by how the dotplot is constructed.
    • We can accurately calculate the overall range (largest value – smallest value).
  • Here are some observations about histograms:
    • Individual variable values are not visible.
    • Grouping individuals into bins of equal-sized intervals is particularly useful when analyzing large data sets.
    • We can easily use percentages, also called relative frequencies, to describe the distribution.
    • Descriptions of shape, center, and spread are affected by how the bins are defined.
Create the dotplots or histograms for the data set “Recent Grads – Salary” using the Describing and Exploring Quantitative Data tool to answer additional questions.

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