Post on 15-Jan-2016
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Topic 32: Two-Way Mixed Effects Model
Outline
• Two-way mixed models
• Three-way mixed models
Data for two-way design• Y is the response variable
• Factor A with levels i = 1 to a
• Factor B with levels j = 1 to b
• Yijk is the kth observation in cell (i, j)
k = 1 to nij
• Have balanced designs with n = nij
Two-way mixed model• Two-way mixed model has–One fixed effect–One random effect
• Tests: –Again use EMS as guide–Two possible models•Unrestricted mixed model (SAS)•Restricted mixed model (Text)
KNNL Example• KNNL Problem 25.15, p 1080
• Y is fuel efficiency in miles per gallon
• Factor A represents four different drivers, a=4 levels
• Factor B represents five different cars of the same model , b=5
• Each driver drove each car twice over the same 40-mile test course
Read and check the data
data a1; infile 'c:\...\CH25PR15.TXT'; input mpg driver car;proc print data=a1; run;
The dataObs mpg driver car 1 25.3 1 1 2 25.2 1 1 3 28.9 1 2 4 30.0 1 2 5 24.8 1 3 6 25.1 1 3 7 28.4 1 4 8 27.9 1 4 9 27.1 1 5 10 26.6 1 5
Prepare the data for a plot
data a1; set a1; if (driver eq 1)*(car eq 1) then dc='01_1A'; if (driver eq 1)*(car eq 2) then dc='02_1B'; ⋮ if (driver eq 4)*(car eq 5) then dc='20_4E';
Plot the data
title1 'Plot of the data';symbol1 v=circle i=none c=black;proc gplot data=a1; plot mpg*dc/frame;run;
Find the means
proc means data=a1; output out=a2 mean=avmpg; var mpg; by driver car;
Plot the meanstitle1 'Plot of the means';symbol1 v='A' i=join c=black;symbol2 v='B' i=join c=black;symbol3 v='C' i=join c=black;symbol4 v='D' i=join c=black;symbol5 v='E' i=join c=black;proc gplot data=a2; plot avmpg*driver=car/frame;run;
Example Revisited
• Suppose that the four drivers were not randomly selected and there is interest in comparing the four drivers in the study
• Driver (A) is now a fixed effect
• Still consider Car (B) to be a random effect
Mixed effects model(unrestricted)
• Yijk = μ + i + j + ()ij + εijk
• Σi =0 (unknown constants)
j ~ N(0, σ2)
• ()ij ~ N(0, σ2)
• εij ~ N(0, σ2)
• σY2 = σ
2 + σ2 + σ2
Mixed effects model(restricted)
• Yijk = μ + i + j + ()ij + εijk
• Σi =0 (unknown constants)
•
• Σ(b)ij =0 for all j
• εij ~ N(0, σ2)
• σY2 = σ
2 + ((a-1)/a)σ2 + σ2
2 21~ (0, ) and ( ) ~ (0, )j ij
aN N
a
Parameters
• There are a+3 parameters in this model
–a fixed effects means
–σ2
–σ2
–σ2
ANOVA table
• The terms and layout of the ANOVA table are the same as what we used for the fixed effects model
• The expected mean squares (EMS) are different and vary based on the choice of unrestricted or restricted mixed model
EMS (unrestricted)
• E(MSA) = σ2 + bnΣi2 /(a-1)+ nσ
2
• E(MSB) = σ2 + anσ2 + nσ
2
• E(MSAB) = σ2 + nσ2
• E(MSE) = σ2
• Estimates of the variance components can be obtained from these equations, replacing E(MS) with table value, or other methods such as ML
EMS (restricted)
• E(MSA) = σ2 + bnΣi2 /(a-1)+ nσ
2
• E(MSB) = σ2 + anσ2
• E(MSAB) = σ2 + nσ2
• E(MSE) = σ2
• Estimates of the variance components can be obtained from these equations, replacing E(MS) with table value, or other methods such as ML
Diff here
Hypotheses (unrestricted)
• H0A: σ2 = 0; H1A: σ
2 ≠ 0
– H0A is tested by F = MSA/MSAB with df a-1 and (a-1)(b-1)
• H0B: σ2 = 0; H1B : σ
2 ≠ 0
– H0B is tested by F = MSB/MSAB with df b-1 and (a-1)(b-1)
• H0AB : σ2 = 0; H1AB : σ
2 ≠ 0
– H0AB is tested by F = MSAB/MSE with df (a-1)(b-1) and ab(n-1)
Hypotheses (restricted)
• H0A: σ2 = 0; H1A: σ
2 ≠ 0
– H0A is tested by F = MSA/MSAB with df a-1 and (a-1)(b-1)
• H0B: σ2 = 0; H1B : σ
2 ≠ 0
– H0B is tested by F = MSB/MSE with df b-1 and ab(n-1)
• H0AB : σ2 = 0; H1AB : σ
2 ≠ 0
– H0AB is tested by F = MSAB/MSE with df (a-1)(b-1) and ab(n-1)
Comparison of Means
• To compare fixed levels of A, std error is
• Degrees of freedom for t tests and CIs are then (a-1)(b-1)
• This is true for both unrestricted and restricted mixed models
2MSAB / bn
Using Proc Mixed
proc mixed data=a1;
class car driver;
model mpg=driver;
random car car*driver / vcorr;
lsmeans driver / adjust=tukey;
run;SAS considers unrestricted model only…results in slightly different variance estimates
SAS Output
Covariance Parameter Estimates
Cov Parm Estimatecar 2.9343car*driver 0.01406Residual 0.1757
Type 3 Tests of Fixed Effects
EffectNum
DFDen DF F Value Pr > F
driver 3 12 458.26 <.0001
SAS Output
Least Squares Means
Effect driver EstimateStandard
Error DF t Value Pr > |t|driver 1 26.9300 0.7793 12 34.56 <.0001driver 2 34.1500 0.7793 12 43.82 <.0001driver 3 28.8500 0.7793 12 37.02 <.0001driver 4 30.2600 0.7793 12 38.83 <.0001
SAS OutputDifferences of Least Squares Means
Effect driver _driver EstiateStandard
Error DF t Value Pr > |t| Adjustment Adj Pdriver 1 2 -7.2200 0.2019 12 -35.76 <.0001 Tukey-
Kramer
<.0001
driver 1 3 -1.9200 0.2019 12 -9.51 <.0001 Tukey-Kramer
<.0001
driver 1 4 -3.3300 0.2019 12 -16.49 <.0001 Tukey-Kramer
<.0001
driver 2 3 5.3000 0.2019 12 26.25 <.0001 Tukey-Kramer
<.0001
driver 2 4 3.8900 0.2019 12 19.26 <.0001 Tukey-Kramer
<.0001
driver 3 4 -1.4100 0.2019 12 -6.98 <.0001 Tukey-Kramer
<.0001
Three-way models
• We can have zero, one, two, or three random effects
• EMS indicate how to do tests• In some cases the situation is
complicated and we need approximations of an F test, e.g. when all are random, use MS(AB)+MS(AC)-MS(ABC) to test A
Last slide
• Finish reading KNNL Chapter 25
• We used program topic32.sas to generate the output for today