Fix/EDA typos (#1427)
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EDA.qmd
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EDA.qmd
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@ -399,7 +399,7 @@ In the exercises, you'll be challenged to figure out why.
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`cut` is an ordered factor: fair is worse than good, which is worse than very good and so on.
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Many categorical variables don't have such an intrinsic order, so you might want to reorder them to make a more informative display.
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One way to do that is with `fct_reorder()`.
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You'll learn more about that function in @sec-modifying-factor-order, but we wanted to give you a quick preview here because it's so useful.
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You'll learn more about that function in @sec-modifying-factor-order, but we want to give you a quick preview here because it's so useful.
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For example, take the `class` variable in the `mpg` dataset.
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You might be interested to know how highway mileage varies across classes:
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@ -710,7 +710,7 @@ We're not discussing modelling in this book because understanding what models ar
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## Summary
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In this chapter you've learned a variety of tools to help you understand the variation within your data.
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You've seen technique that work with a single variable at a time and with a pair of variables.
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This might seem painful restrictive if you have tens or hundreds of variables in your data, but they're foundation upon which all other techniques are built.
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You've seen techniques that work with a single variable at a time and with a pair of variables.
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This might seem painfully restrictive if you have tens or hundreds of variables in your data, but they're foundation upon which all other techniques are built.
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In the next chapter, we'll focus on the tools we can use to communicate our results.
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