(a) y = 418.5579 + 445.8894*x1 + (-2.9404)*x2
(b) Option B
(c) Option C
(d)
Predicted |
457.00 |
(e)
95% Confidence Interval | |
lower | upper |
405.9 | 508.1 |
(f)
95% Prediction Interval | |
lower | upper |
255.8 | 658.2 |
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Х Data Table Property Size Age Appraised Value 461.5 362.7 426.9 541.6 409.9 376.6 313.8 742.6...
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