anonymous
  • anonymous
Which kind of function best models the set of data points (–3, 18), (–2, 6), (–1, 2), (0, 11), and (1, 27)? linear quadratic exponential none of the above
Mathematics
  • Stacey Warren - Expert brainly.com
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SOLVED
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katieb
  • katieb
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anonymous
  • anonymous
Quadratic - it has about a 99.54% fit.
anonymous
  • anonymous
how'd you get 99.54? hahah
anonymous
  • anonymous
That just sounds right, doesn't it? ;)

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anonymous
  • anonymous
I used a TI-83. :)
anonymous
  • anonymous
roflmao got'cha
Directrix
  • Directrix
I plotted the points by hand on a sheet of paper to get some idea of the relationship. With only 5 points, it is dicey in my opinion to settle on any model with certainty without further investigation. That said, the distribution of the five points is not linear and is not exponential. It is either quadratic or none of the above. Of those two, the distribution leans toward being quadratic because it has taken on a semi-parabola appearance.

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