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* alpha is likelihood of making a type I error (usually = 0.05) | __Spreadsheet and SPSS macro inputs__ * alpha is the likelihood of making a type I error (usually = 0.05) |
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where SS represents the sum of squares associated with a particular term in the anova. In other words, partial $$\eta^text{2}$$ represents the proportion of variance in outcome predicted by the effect after adjusting for other terms in the anova. Click [[attachment:etasqrp.pdf|here]] for further details on partial $$\eta^text{2}$$ and [[attachment:etasq.pdf|here.]] If the Sums of Squares are not available you can[[FAQ/power/rsqform| construct eta-squared]]. * num(erator) = df of term of interest = the product of the (number of levels of each factor -1) in term of interest * sum (B-1) = sum of dfs involving '''only''' between subject factors in the anova or zero otherwise. df = Product of number of levels minus 1 of each between subject factor in term of interest. e.g. For a three way interaction involving three between subject factors, abc, we sum the dfs of the six lower order combinations: ab, ac and bc, a, b and c to that of abc * Prod (W-1) = df of within subject effect if in term of interest or 1 otherwise. df = Product of number of levels minus 1 of each within subject factor in term of interest |
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or, in other words, the proportion of variance in outcome predicted by the effect after adjusting for other terms in the anova. [attachment:etasqrp.pdf Click here for further details on partial $$\eta^text{2}$$] and [attachment:etasq.pdf here.] | * Prod W = The product of all the ithin subject levels in term of interest * corr is the average correlation between levels of the repeated measures (=0 if no within subjects factors) |
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For B between subject factors with levels $$b_{i}$$, i=1, ..., B and W with subject factors with levels $$w_{i}$$, j=1, ..., W | * Total sample size |
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* num(erator) = $$ \prod_{\mbox{factors}} $$ (number of levels of factor -1) in term of interest | [[FAQ/power/powexampleN| Example input]] |
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* d1 = $$\sum_{i}^{B} (b_{i} - 1) $$ if B > 0 in anova = 0 otherwise |
Power can be computed using an EXCEL [[attachment:aovp.xls|spreadsheet]] or the SPSS syntax below. Power analysis software using Winer (1991, pp 136-138) for balanced anovas may be downloaded from [[http://www.soton.ac.uk/~cpd/anovas/datasets/|here]] with details of how to compute inputs [[FAQ/Doncaster| here.]] |
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* d2 = $$ \prod_{j}^{W} (w_{j} - 1) $$ if W > 0 in term of interest = 1 otherwise * prod = number of combinations of within subject factors * ntot is the total sample size [:FAQ/power/powexampleN: Example input] Power can be computed using an EXCEL [attachment:aov.xls spreadsheet] or the SPSS syntax below. [ COPY AND PASTE THE BOXED BELOW SYNTAX BELOW INTO A SPSS SYNTAX WINDOW AND RUN; ADJUST INPUT DATA AS REQUIRED] |
[ COPY AND PASTE THE SYNTAX IN THE BOX BELOW INTO A SPSS SYNTAX WINDOW AND RUN; ADJUST INPUT DATA AS REQUIRED] |
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/alpha num d1 d2 prod ntot rsq. | /alpha num bsum wdf corr ntot rsq. |
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.05 2 1 2 3 60 0.0588 .05 2 1 2 3 67 0.0588 |
.05 2 1 2 0.0 60 0.0588 .05 2 1 2 0.3 67 0.0588 |
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get m /variables=alpha num d1 d2 prod ntot rsq /missing=omit. | get m /variables=alpha num bsum wdf corr ntot rsq /missing=omit. |
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compute d1=make(1,1,0). compute d2=make(1,1,0). compute prod=make(1,1,0). |
compute bsum=make(1,1,0). compute wdf=make(1,1,0). compute corr=make(1,1,0). |
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compute d1=m(:,3). compute d2=m(:,4). compute prod=m(:,5). |
compute bsum=m(:,3). compute wdf=m(:,4). compute corr=m(:,5). |
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compute denom = (ntot-1-d1)*d2. COMPUTE power = 1 - NCDF.F(IDF.F(1-ALPHA,num,denom),num,denom,NTOT*prod*RSQ/(1-RSQ)). |
compute denom = (ntot-1-bsum)*wdf. COMPUTE power = 1 - NCDF.F(IDF.F(1-ALPHA,num,denom),num,denom,((NTOT-1-bsum)*wdf*RSQ/(1-RSQ))/(1-corr)). |
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formats ntot (f7.0) alpha (f5.2) num (f5.2) denom (f5.2) rsq (f5.2) power (f5.2). variable labels ntot 'Total Sample Size' /alpha 'Alpha' /num 'Numerator F' /denom 'Denominator F' /rsq 'R-squared' /power 'Power'. |
formats ntot (f7.0) alpha (f5.2) num (f5.2) denom (f5.2) corr (f5.2)rsq (f5.2) power (f5.2). variable labels ntot 'Total Sample Size' /alpha 'Alpha' /num 'Numerator F' /denom 'Denominator F' /corr 'Correlation' /rsq 'R-squared' /power 'Power'. |
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/variables=ntot alpha num denom rsq power | /variables=ntot alpha num denom corr rsq power |
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__Reference__ Doncaster CP and Davey AJH (2007) Analysis of covariance. How to choose and construct models for the life sciences. CUP:Cambridge. Winer BJ, Brown DR and Michels KM (1991) Statistical principles in experimental design, 3rd edition. McGraw-Hill:New York. |
Spreadsheet and SPSS macro inputs
- alpha is the likelihood of making a type I error (usually = 0.05)
- etasq is partial $$\eta^text{2}$$/100 so, for example, 5.9% = 0.059
Partial $$\eta^text{2}$$ = $$ \frac{\mbox{SS(effect)}}{\mbox{SS(effect) + SS(its error)}}$$ where SS represents the sum of squares associated with a particular term in the anova.
In other words, partial $$\eta^text{2}$$ represents the proportion of variance in outcome predicted by the effect after adjusting for other terms in the anova. Click here for further details on partial $$\eta^text{2}$$ and here.
If the Sums of Squares are not available you canconstruct eta-squared.
- num(erator) = df of term of interest = the product of the (number of levels of each factor -1) in term of interest
sum (B-1) = sum of dfs involving only between subject factors in the anova or zero otherwise. df = Product of number of levels minus 1 of each between subject factor in term of interest. e.g. For a three way interaction involving three between subject factors, abc, we sum the dfs of the six lower order combinations: ab, ac and bc, a, b and c to that of abc
- Prod (W-1) = df of within subject effect if in term of interest or 1 otherwise. df = Product of number of levels minus 1 of each within subject factor in term of interest
- Prod W = The product of all the ithin subject levels in term of interest
- corr is the average correlation between levels of the repeated measures (=0 if no within subjects factors)
- Total sample size
Power can be computed using an EXCEL spreadsheet or the SPSS syntax below. Power analysis software using Winer (1991, pp 136-138) for balanced anovas may be downloaded from here with details of how to compute inputs here.
[ COPY AND PASTE THE SYNTAX IN THE BOX BELOW INTO A SPSS SYNTAX WINDOW AND RUN; ADJUST INPUT DATA AS REQUIRED]
DATA LIST free /alpha num bsum wdf corr ntot rsq. BEGIN DATA. .05 2 1 2 0.0 60 0.0588 .05 2 1 2 0.3 67 0.0588 END DATA. set errors=none. matrix. get m /variables=alpha num bsum wdf corr ntot rsq /missing=omit. compute alpha=make(1,1,0). compute num=make(1,1,0). compute bsum=make(1,1,0). compute wdf=make(1,1,0). compute corr=make(1,1,0). compute ntot=make(1,1,0). compute rsq=make(1,1,0). compute alpha=m(:,1). compute num=m(:,2). compute bsum=m(:,3). compute wdf=m(:,4). compute corr=m(:,5). compute ntot=m(:,6). compute rsq=(m:,7). end matrix. compute denom = (ntot-1-bsum)*wdf. COMPUTE power = 1 - NCDF.F(IDF.F(1-ALPHA,num,denom),num,denom,((NTOT-1-bsum)*wdf*RSQ/(1-RSQ))/(1-corr)). EXE. formats ntot (f7.0) alpha (f5.2) num (f5.2) denom (f5.2) corr (f5.2)rsq (f5.2) power (f5.2). variable labels ntot 'Total Sample Size' /alpha 'Alpha' /num 'Numerator F' /denom 'Denominator F' /corr 'Correlation' /rsq 'R-squared' /power 'Power'. report format=list automatic align(center) /variables=ntot alpha num denom corr rsq power /title "ANOVA power, between subjects factor possibly in a mixed design for given total sample size" .
Reference
Doncaster CP and Davey AJH (2007) Analysis of covariance. How to choose and construct models for the life sciences. CUP:Cambridge.
Winer BJ, Brown DR and Michels KM (1991) Statistical principles in experimental design, 3rd edition. McGraw-Hill:New York.