Refer to the following computer output from estimating the parameters of the nonlinear model Y=aRbSCTd The computer output from the regression analysis is: DEPENDENT VARIABLE: LNY R-SQUARE OBSERVATIONS: 32 0.7766 VARIABLE INTERCEPT F-RATIO 32.44 P-VALUE ON F 0.0001 PARAMETER ESTIMATE STANDARD ERROR T-RATIO -2.17 3.43 -0.6931 4.66 -0.44 8.28 P-VALUE 0.0390 0.0019 0.0774 0.0826 0.32 LNR 1.36 LNS 0.24 -1.83 LNT 4.60 1.80 Based on the information in the table, the nonlinear relation can be transformed into the following linear regression model:

Managerial Economics: Applications, Strategies and Tactics (MindTap Course List)
14th Edition
ISBN:9781305506381
Author:James R. McGuigan, R. Charles Moyer, Frederick H.deB. Harris
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Chapter4A: Problems In Applying The Linear Regression Model
Section: Chapter Questions
Problem 2E
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Refer to the following computer output from estimating the parameters of the nonlinear model
Y=aRbsc7d
The computer output from the regression analysis is:
DEPENDENT VARIABLE: LNY R-SQUARE
32 0.7766
OBSERVATIONS:
VARIABLE
INTERCEPT
LNR
P-VALUE ON F
0.0001
PARAMETER ESTIMATE STANDARD ERROR T-RATIO
-0.6931
F-RATIO
4.66
-0.44
8.28
32.44
0.32
1.36
-2.17
3.43
-1.83
P-VALUE
1.80
0.0390
LNS
0.24
LNT
4.60
Based on the information in the table, the nonlinear relation can be transformed into the following linear regression model:
Multiple Choice
in Y= 1n a.ln R.1n S.1n T
in Y= 1na + b1nR+ cins + din T
1n Y = 1n(aRb SC7d)
Y = 1n(aRb Sc7d)
0.0019
0.0774
0.0826
Transcribed Image Text:Refer to the following computer output from estimating the parameters of the nonlinear model Y=aRbsc7d The computer output from the regression analysis is: DEPENDENT VARIABLE: LNY R-SQUARE 32 0.7766 OBSERVATIONS: VARIABLE INTERCEPT LNR P-VALUE ON F 0.0001 PARAMETER ESTIMATE STANDARD ERROR T-RATIO -0.6931 F-RATIO 4.66 -0.44 8.28 32.44 0.32 1.36 -2.17 3.43 -1.83 P-VALUE 1.80 0.0390 LNS 0.24 LNT 4.60 Based on the information in the table, the nonlinear relation can be transformed into the following linear regression model: Multiple Choice in Y= 1n a.ln R.1n S.1n T in Y= 1na + b1nR+ cins + din T 1n Y = 1n(aRb SC7d) Y = 1n(aRb Sc7d) 0.0019 0.0774 0.0826
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