ina multiple regression with six predictors in a sample of 67 cities what would be the critical value foran f test of overall significance at x .05
df regression = no. of precitors = 6
df total = N-1 = 67-1 = 66
df error = df total -df regression = 66-6 = 60
so, F critical value at α=0.05, df1 = 6 , df2 = 60 is 2.254 (answer)
{excel function for F critical value "=F.INV.RT(0.05,6,60) " }
ina multiple regression with six predictors in a sample of 67 cities what would be the...
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