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Regression Statistics Multiple R R Square Adjusted R Square Standard Error Observations 0.72 0.51 0.38 99.45 6Anova df SS MS F Significance F 0.11 1 41497.60 41497.60 4.20 Regression Residual 4 39561.23 9890.31 Total 5 81058.83t Stat P-value Coefficients Standard Error 1423.60 564.95 2.52 0.07 Intercept X Variable 1 Lower 95% Upper 95% -144.96 2992.1Assume that Craigs Fresh and Hot Pancake Restaurant does a regression analysis on the next years data using Excel. The outp

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Answer #1
1
The fixed cost per month is denoted by Intercept Coefficients
The fixed cost per month is $1423.60
2
The variable cost per pancake is denoted by X Variable 1 Coefficients
The variable cost per pancake is $0.31
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