121 0 112KB
![ANOVA Cheat Sheet [PDF]](https://vdoc.tips/img/200x200/anova-cheat-sheet.jpg)
ANOVA(Analysis of Variance) Cheat Sheet Null Hypothesis, Ho : 1  2  3  ...  k
 
 k
 
 AlternateHypothesis, Ha : At least one k is different ANOVA looks at three sources of variability 1) Total variability among observations 2) Variability between group means (factor) 3) Random variation within each group (error) TOTAL = Between + Within    Between Within
 
 ANOVA Table Source
 
 MSwithin 
 
 
 
  ( y
 
 ij
 
 j 1 i 1
 
 MS(Factor) MS(Error)
 
 Df
 
 MS
 
 F
 
 p
 
 SS(Factor)
 
 k-1
 
 SS(Factor) (k-1)
 
 MS(Factor) MS(Error)
 
 Within or Error
 
 SS(Error)
 
 k(n-1)
 
 SS(Error) k(n-1)
 
 Area under F curve from calculated F to 
 
 Total
 
 SS(Total)
 
 MSbetween 
 
 n = number of observations at each level(sample size per treatment) k = number of levels N = Total number of observations In ANOVA, the degrees of freedom(Df) are as follows: Dftotal = N-1 = # of observations - 1 Dffactor = k-1 = # of levels - 1 Dferror = Dftotal - Dfeverything else
 
 Two-Way ANOVA
 
 Studies the effect of two factors and their interaction at various levels on a response variable
 
 j 1
 
 j
 
 Degrees of Freedom within
 
  y )2
 
 (k  1)
 
 SS between
 
 Degrees of Freedom between
 
 Note: Figure below assumes alpha level of .05 (5%) for illustration. Your selected alpha should “fit” your problem
 
 Fcalculated > Fcritical means there is less than a 5% chance that the larger between treatment variation occurred by chance alone, thus reject the null hypothesis, Ho. Else, if Fcalculated < Fcritical, you cannot reject the null hypothesis based on the data.
 
 Minitab ANOVA Options (Stat/DOE/Factorial/Analyze Factorial Design very similar to Balanced ANOVA) Studies the effect of one factor at various levels on a response variable
 
  n( y
 
 SS within
 
 ANOVA Assumptions 1) Equal variance at all treatments 2) Process distribution is normal 3) Runs are independent (replicates)
 
 N-1
 
 One-Way ANOVA
 
  y j )2
 
 k (n  1) k
 
 SS
 
 Between or Factor
 
 n
 
 Fcritical @ 5%
 
 Balanced ANOVA
 
 General Linear Model Fully Nested ANOVA
 
 Studies the impact of 2 or more factors and there interactions at various levels on a response variable. The levels of factors are structured such that there are an equal number of levels and observations within each level for each factor. Studies the impact of 2 or more factors and interactions at various levels one a response variable. Number of levels and observations may vary. Factors may be a mixture nested and crossed relationship. User must specify factors, interactions and nested/crossed relationships of interest. Studies the impact of 2 or more factors. Factors are structured in a hierarchical structure such that one factor is nested (or unique to) the factor above it. No interactions are obtained.
 
 Curve changes as a function of the numerator and denominator DOF
 
 Use for COV
 
 5% of the total area is from Fcritical to 
 
 Fcalculated
 
 The calculated p value represents the area under the curve from Fcalculated to 
 
 Represents the amount of risk you’re willing to take of being wrong when you say that you’ve found this factor to have a statistically significant effect
 
 11-5-02