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My question is in the title. I am unsure if the non-interaction terms are being accounted for as the output of drop1 does not include them, but only the interaction terms. The code and output is as follows:

> temp = lm(auto.mpg.data$mpg ~ auto.mpg.data$weight + auto.mpg.data$model_year + auto.mpg.data$origin + auto.mpg.data$weight:auto.mpg.data$model_year + auto.mpg.data$weight:auto.mpg.data$origin + auto.mpg.data$model_year:auto.mpg.data$origin)
> drop1(temp, test="F")
Single term deletions

auto.mpg.data$mpg ~ auto.mpg.data$weight + auto.mpg.data$model_year + 
        auto.mpg.data$origin + auto.mpg.data$weight:auto.mpg.data$model_year + 
    auto.mpg.data$weight:auto.mpg.data$origin + auto.mpg.data$model_year:auto.mpg.data$origin
                                              Df Sum of Sq    RSS    AIC F value    Pr(>F)    
<none>                                                     3769.8 908.83                      
auto.mpg.data$weight:auto.mpg.data$model_year  1   300.625 4070.4 937.37 31.1807 4.407e-08 ***
auto.mpg.data$weight:auto.mpg.data$origin      1    94.557 3864.3 916.69  9.8074  0.001869 ** 
auto.mpg.data$model_year:auto.mpg.data$origin  1     0.027 3769.8 906.83  0.0028  0.958085    
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 `enter code here`
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migrated from stats.stackexchange.com Mar 15 '13 at 13:47

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A word of advice, don't use data$column when creating formula for linear models. Use lm(mpg~(weight+model_year+origin)^2, data = auto.mpg.data) to get the same model. –  mnel Mar 15 '13 at 1:16
It is worth reading stats.ox.ac.uk/pub/MASS3/Exegeses.pdf –  mnel Mar 15 '13 at 1:20
It's not really clear what you mean by "account for". drop1 is just dropping each term and comparing the model without it to the full model. –  Ista Mar 15 '13 at 1:29
What I meant by "account for" is that the singleton terms, weight/model_year/origin, don't seem to get dropped as they don't have their own line in the output. Each of the interaction terms, are dropped and "accounted for" in the output. Thank you mnel for your helpful advice and link. I found the answer there: The second option for drop1 is called scope where you can specify with a formula which terms are to be considered for the adding and dropping. –  davidhwang Mar 15 '13 at 5:14

1 Answer 1

up vote 1 down vote accepted

Yes, the drop1 functions accounts for the lower-level terms if an interaction is present. If a predictor is part of an interaction, it will not be dropped.

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