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11.1: Prelude to the Chi-Square Distribution

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    Have you ever wondered if lottery winning numbers were evenly distributed or if some numbers occurred with a greater frequency? How about if the types of movies people preferred were different across different age groups? What about if a coffee machine was dispensing approximately the same amount of coffee each time? You could answer these questions by conducting a hypothesis test.

    This is a photo of a pile of grocery store receipts. The items and prices are blurred.
    Figure \(\PageIndex{1}\): The chi-square distribution can be used to find relationships between two things, like grocery prices at different stores. (credit: Pete/flickr)

    You will now study a new distribution, one that is used to determine the answers to such questions. This distribution is called the chi-square distribution. In this chapter, you will learn the three major applications of the chi-square distribution:

    1. the goodness-of-fit test, which determines if data fit a particular distribution, such as in the lottery example
    2. the test of independence, which determines if events are independent, such as in the movie example
    3. the test of a single variance, which tests variability, such as in the coffee example

    This page titled 11.1: Prelude to the Chi-Square Distribution is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by OpenStax via source content that was edited to the style and standards of the LibreTexts platform; a detailed edit history is available upon request.