Question

you are given the following regression results: ˆ 2 R =0.6149 (1) 2 R =0.7706 (2)...

you are given the following regression results: ˆ
2
R =0.6149 (1)
2
R =0.7706 (2)
Yt =16.899-2978.5X2t t = (8.5152) (-4.7280)
ˆ
Yt =9734.2-3782.2X2t +2815X3t
t = 3.3705 -6.6070 2.9712 ()()()
Can you find out the sample size underlying these results.

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