Question

Data were collected on the age (in years) and price (in thousands of dollars) of a...

Data were collected on the age (in years) and price (in thousands of dollars) of a random sample of 25 used Honda Civic. A
scatterplot of the data (with regression line) and computer output from a regression analysis are provided:
Pearson correlation of the age (in years) and price (in thousands of dollars) = ?
P-Value =?
The regression equation is Price = 15.3 - 1.71 Age
Predictor Coef SE Coef T P
Constant 15.2912 0.5840
Age -1.7126 0.1264

S = 1.37179 R-Sq = 88.9% R-Sq(adj) = 88.4%

To construct a 90% confidence interval for the population slope. find t* = ?

Group of answer choices

1.319

1.711

1.714

1.708

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