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3: Visualizing Data

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    58892
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    Chapter 3: Visualizing Data

    Once you’ve collected and summarized data, the next step is to visualize it. Graphical displays help you spot patterns, compare groups, identify outliers, and communicate your findings clearly. They often reveal insights that summary statistics alone can’t show.

    In this chapter, you’ll learn how to create and interpret a variety of plots — starting with simple charts for categorical data, and moving to more detailed views for quantitative data. You’ll also explore how frequency, distribution shape, and time trends can be seen more clearly with effective visuals.

    Why Visuals Matter: A Motivating Example

    Suppose two cities each report that the average monthly rent for a one-bedroom apartment is $1,200. But when you look at the data distributions, you find this:

    • City A: Most apartments are clustered between $1,150 and $1,250 — rent is fairly consistent.
    • City B: Half the apartments are under $1,000, and the rest are over $1,400 — rent is extremely variable.

    Even with the same average, these cities paint two totally different pictures for a renter. A graph shows the whole story — helping you evaluate patterns, risks, and equity in a way a single number can’t capture.

    Coming Up: You’ll start by looking at how to graph categorical data, including bar charts and pie charts. Then we’ll move on to histograms and other displays for quantitative variables, and explore how shape, variation, and time can be visualized.

    This page titled 3: Visualizing Data is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by Mathematics Department.

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