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2. 2. After we fit the model, the R commander output is provided below. Coefficients: (Intercept) -5.128e+03 1.103e+02 46.49(a) Write down the hypotheses to determine whether the data provide sufficient information to indicate that the second-order

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P value (一上く ー16 5 2,2 X10- Here i (a) Hoi modet inctudes Secand order e Ho Scond arder terms Condaburte infomation fos theP value (一上く ー16 5 2,2 X10- Here i (a) Hoi modet inctudes Secand order e Ho Scond arder terms Condaburte infomation fos theRe duce or ders roode Co) -statistic- F Stati stcsMSR MS Res 667- 55cittica hh of observations n= 25 2 8661 Conlcude that 2hd order tes Cshbibtte

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2. 2. After we fit the model, the R commander output is provided below. Coefficients: (Intercept)...
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