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3.2: Graphical Displays for Quantitative Data- Dot Plots and Stemplots

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    58894
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    When working with quantitative variables (like height, price, or temperature), we need visual tools that preserve the numerical nature of the data. Instead of comparing category labels (like with bar or pie charts), we're often interested in the overall distribution: How are the values spread out? Are they clustered? Symmetrical? Skewed?

    In this section, we’ll look at three powerful tools that help us graph quantitative data:

    • Histograms: show overall shape and spread of a distribution
    • Dot Plots: show individual data points with frequencies
    • Stemplots (Stem-and-Leaf Plots): preserve exact values while showing the distribution

    Here we are going to take a look at Stemplots and Dot Plots and we will take a deeper look at histograms in a future section.


    Dot Plot

    A dot plot places one dot above a number line for each data point. When multiple observations share the same value, the dots stack upward. It's an effective way to show exact data values and frequencies, especially with smaller datasets.

    Also called: Line dot plot, stacked dot chart

    Use when: You have a relatively small dataset and want an exact picture of the values and clusters.

    Example: An English teacher asked 12 students how many books they read during a semester. The responses were:

    [2, 6, 2, 0, 3, 2, 1, 0, 2, 3, 2, 3].

    Though this isn't a large dataset, it offers a nice variety of values. When arranged in a dot plot, it's easy to see the rough distribution of reading, but also allows for one to count the exact amount of dots for a particular value. As the data set gets larger, this advange is lost if the dots are too numerous.

    Bar chart showing the number of students and the count of books read, highest at 2 books.


    Stemplot (Stem-and-Leaf Plot)

    A stemplot or stem-and-leaf plot displays quantitative data by splitting each value into a "stem" (typically the leading digit[s]) and a "leaf" (typically the final digit). This method keeps all original data visible while showing the distribution shape.

    Also called: Stem plot, stem chart

    Use when: You want to show both individual values and how they're distributed. Ideal for small to moderate samples.

    Example data:
    [59, 62, 65, 65, 66, 67, 71, 72, 78, 81, 85, 87]

    Stem-and-leaf display:

    5 | 9
    6 | 2 5 5 6 7
    7 | 1 2 8
    8 | 1 5 7
      

    To understand the data in this plot, we can examine a single row, such as the second one. The 6 on the left of the bar indicates that all values in this row begin with 6; they are all in the sixties. We have a 2, 5, 6 and 7 to the right of the bar, so we pair these values with the 6. That tells us that 62, 65, 66, and 67 are in our data set. Notice that the 5 appears twice, as 65 also appears twice in the data.


    What’s Next?

    Now that you’ve learned how to visualize individual quantitative variables, we’ll explore the overall shapes of distributions — like symmetry vs. skew and how these visual patterns connect to what we’ve learned about center and spread.


    This page titled 3.2: Graphical Displays for Quantitative Data- Dot Plots and Stemplots is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by Mathematics Department.

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