Multiple Choice
Abby Kratz,a market specialist at the market research firm of Saez,Sikes,and Spitz,is analyzing household budget data collected by her firm.Abby's dependent variable is monthly household expenditures on groceries (in $'s) ,and her independent variable is annual household income (in $1,000's) .Regression analysis of the data yielded the following tables. 11eaa55d_2fe1_3078_85d2_59082a5460f1_TB3123_00 Abby's regression model is __________.
A) y = 39.15 + 2.79x
B) y = 39.15 - 1.79x
C) y = 1.79 + 39.15x
D) y = -1.79 + 39.15x
E) y = 39.15 + 1.79x
s) ,and her independent variable is annual household income (in $1,000's) .Regression analysis of the data yielded the following tables. Abby's regression model is __________. A) y = 39.15 + 2.79x B) y = 39.15 - 1.79x C) y = 1.79 + 39.15x D) y = -1.79 + 39.15x E) y = 39.15 + 1.79x " class="answers-bank-image d-block" rel="preload" > Abby's regression model is __________.
A) y = 39.15 + 2.79x
B) y = 39.15 - 1.79x
C) y = 1.79 + 39.15x
D) y = -1.79 + 39.15x
E) y = 39.15 + 1.79x
s) ,and her independent variable is annual household income (in $1,000's) .Regression analysis of the data yielded the following tables. Abby's regression model is __________. A) y = 39.15 + 2.79x B) y = 39.15 - 1.79x C) y = 1.79 + 39.15x D) y = -1.79 + 39.15x E) y = 39.15 + 1.79x " class="answers-bank-image d-block" rel="preload" > 11eaa55d_2fe1_3078_85d2_59082a5460f1_TB3123_00 Abby's regression model is __________.
A) y = 39.15 + 2.79x
B) y = 39.15 - 1.79x
C) y = 1.79 + 39.15x
D) y = -1.79 + 39.15x
E) y = 39.15 + 1.79x
Correct Answer:

Verified
Correct Answer:
Verified
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