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In Exercises 21–24, use technology to find the quadratic regression curve through the given points. (Round all coefficients to four decimal places.) [HINT: See Example 5.]
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Chapter 2 Solutions
Bundle: Applied Calculus, Loose-leaf Version, 7th + Webassign Printed Access Card For Waner/costenoble's Applied Calculus, 7th Edition, Single-term
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