ADM 2304 Lecture Notes - Lecture 14: Null Hypothesis, Analysis Of Variance, Complement Factor B

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In each example above, there is a strong chance of an interaction between the two factors making their effect on the outcome variable complex. Let a and b represent the two factors (i. e. , manufacturer and vehicle type) and suppose that: The row factor a has a levels (number of manufacturers) The column factor b has b levels (number of vehicle types) Thus, if each treatment combination is represented r times in the sample then there are. Instead we introduce you to a two-factor anova test: Just like a one-factor anova, we create an f statistic where both the numerator and the denominator are estimates of the population standard deviation if the null hypothesis is true. If it is not then the numerator is an over-estimate of the sd and thus large f values give us reason to believe that the null hypothesis is false.

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