Question

The equation used to predict annual cauliflower yield​ (in pounds per​ acre) is y(with the hat)=...

The equation used to predict annual cauliflower yield​ (in pounds per​ acre) is y(with the hat)= 24,975+ 4.45x1-4.665x2, where x1 is the number of acres planted and x2 is the number of acres harvested.

Use the multiple regression equation to predict the​ y-values for the values of the independent variables. ​

(a) x1= 35,400 x2=35,800

(b) x1= 37,200 x2= 37,400

​(c) x1= 38,100 x2= 38,300

d) x1= 41,400 x2= 41,500

a) The predicted yield is ____ pounds per acre. ​(Round to one decimal place as​ needed.) ​

(b) The predicted yield is ____ pounds per acre. ​(Round to one decimal place as​ needed.)

​(c) The predicted yield is _____ pounds per acre. ​(Round to one decimal place as​ needed.)

​(d) The predicted yield is ____ pounds per acre. ​(Round to one decimal place as​ needed.)

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