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I want to do a MAM, but I'm having difficulty in removing some terms:

 full.model<-glm(SSB_sq~Veg_height+Bare+Common+Birds_Foot+Average_March+Average_April+
Average_May+Average_June15+Average_June20+Average_June25+Average_July15
+Average_July20+Average_July25,family="poisson") 
summary(full.model)

I believe I have to remove these terms to start the MAM like so:

  model1<-update(full.model,~.-Veg_height:Bare:Common:Birds_Foot:Average_March
:Average_April:Average_May:Average_June15:Average_June20:Average_June25:
Average_July15:Average_July20:Average_July25,family="poisson")
summary(model1)
anova(model1,full.model,test="Chi")

But I get this output:

anova(model1,full.model,test="Chi")
Analysis of Deviance Table

Model 1: SSB_sq ~ Veg_height + Bare + Common + Birds_Foot + Average_March + 
    Average_April + Average_May + Average_June15 + Average_June20 + 
    Average_June25 + Average_July15 + Average_July20 + Average_July25
Model 2: SSB_sq ~ Veg_height + Bare + Common + Birds_Foot + Average_March + 
    Average_April + Average_May + Average_June15 + Average_June20 + 
    Average_June25 + Average_July15 + Average_July20 + Average_July25
  Resid. Df Resid. Dev Df Deviance P(>|Chi|)
1       213     237.87                      
2       213     237.87  0        0 

I've tried putting plus signs in model1 instead of colons, as I was clutching at straws when reading my notes but the same thing happens.

Why are both my models the same? I've tried searching on Google but I'm not very good at the terminology so my searches aren't bringing up much.

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The colon term ":" in a formula designates an interaction effect. See ?formula. Could you show us the call for model1 after you've updated... model1$call? –  Brandon Bertelsen Jul 19 '11 at 20:31
    
OK, so ":" and * designate interactions? I'm not interested in the interactions at the moment hence me using "+", so I obviously need to change my colons to something else in model1? I'm embarrassed to say I don't understand what you're asking in model1$call too. I'm very sorry! –  Gem Jul 19 '11 at 20:36
    
I worked out what you meant, dozy moment! > model1$call glm(formula = SSB_sq ~ Veg_height + Bare + Common + Birds_Foot + Average_March + Average_April + Average_May + Average_June15 + Average_June20 + Average_June25 + Average_July15 + Average_July20 + Average_July25, family = "poisson") –  Gem Jul 19 '11 at 20:40
    
And MAM means what, exactly? "Minimal, adequate model"? –  Gavin Simpson Jul 19 '11 at 21:00
    
Yes, MAM is minimal adequate model, although some papers have it as minimum adequate model. –  Gem Jul 19 '11 at 21:04

2 Answers 2

up vote 1 down vote accepted

If I read your intention correctly, are you trying to fit a null model with no terms in it? If so, a simpler way is just to use the SSB_sq ~ 1 as the formula, meaning a model with only an intercept.

fit <- lm(sr ~ ., data = LifeCycleSavings)
fit0 <- lm(sr ~ 1, data = LifeCycleSavings)
## or via an update:
fit01 <- update(fit, . ~ 1)

Which gives, for example:

> anova(fit)
Analysis of Variance Table

Response: sr
          Df Sum Sq Mean Sq F value    Pr(>F)    
pop15      1 204.12 204.118 14.1157 0.0004922 ***
pop75      1  53.34  53.343  3.6889 0.0611255 .  
dpi        1  12.40  12.401  0.8576 0.3593551    
ddpi       1  63.05  63.054  4.3605 0.0424711 *  
Residuals 45 650.71  14.460                      
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 
> anova(fit, fit0)
Analysis of Variance Table

Model 1: sr ~ pop15 + pop75 + dpi + ddpi
Model 2: sr ~ 1
  Res.Df    RSS Df Sum of Sq      F    Pr(>F)    
1     45 650.71                                  
2     49 983.63 -4   -332.92 5.7557 0.0007904 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 

An explanation of the formulae I use:

  • The first model used the shortcut ., which means all remaining variables in argument data (in my model it meant all variables in LifeCycleSavings on the RHS of the formula, except for sr which is already on the LHS).
  • In the second model (fit0), we only include 1 on the RHS of the formula. In R, 1 means an intercept, so sr ~ 1 means fit an intercept-only model. By default, an intercept is assumed, hence we did not need 1 when specifying the first model fit.
  • If you want to suppress an intercept, add - 1 or + 0 to your formula.

For your data, the first model would be:

full.model <- glm(SSB_sq ~ ., data = FOO, family = "poisson")

where FOO is the data frame holding your variables - you are using a data frame, aren't you? The null, intercept-only model would be specified using one of:

null.model <- glm(SSB_sq ~ 1, data = FOO, family = "poisson")

or

null.model <- update(full.model, . ~ 1)
share|improve this answer
    
Wow, I've never seen anything like this in my notes! How would my data fit into this? Am I just replacing LifeCycleSavings? –  Gem Jul 19 '11 at 21:20
    
Well I figured it out and got it to work up until the anova(fit,fit0) part where it told me Error in anova.lmlist(object, ...) : models were not all fitted to the same size of dataset –  Gem Jul 19 '11 at 21:30
    
@Gem LifeCycleSavings is a data frame containing the variables used ot fit the model. You should replace it with your data frame containing the variables you mention. Also note that I used lm() but these are general concepts used with many R modelling functions including glm() –  Gavin Simpson Jul 19 '11 at 21:38
    
@Gem do you have missing data in one or more of the covariates used to fit the full model? R will drop observations that have missing data, which might explain the error. If you have a recent R (>= 2.13.0) then try running nobs(FOO) on each of your models (where FOO is replaced by one of your model objects). –  Gavin Simpson Jul 19 '11 at 21:40
    
I do have missing values, but they've been replaced with na values, so tried:Full.clean<- na.omit(Full) > detach(Full) > attach(Full.clean) but then when I ran your coding, although it worked (thank you!), it was including my response variables too. I just don't understand why my original methods, which is how I've been taught to do MAM isn't working! :( –  Gem Jul 20 '11 at 9:16

What about just using step(fullmodel)?

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