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I have a table with Ancylostoma's infection, vs sex (2 factor), location (2 factor), year, management (2 factor), ancestry (4 factor) and viremia like categorical variable, and the I have HL an age like numeric variable.**

I made a glmm:

glm_toxo<-glmer((Ancylostoma) ~ as.factor(Sexo)+(Edad)+as.factor(año)+as.factor(Manejo)+as.factor(Localizacion)+as.factor(Viremia.FeLV) +(Ancestria) +(HL)+as.factor(1|Nombre), family="binomial", data= data_silv)

dd_toxo <- dredge (glm_toxo)
a<- get.models(dd_toxo, subset = delta < 2)

And I got this result

Model-averaged coefficients: 
                             Estimate Std. Error z value Pr(>|z|)    
(Intercept)                   -2.0222     0.8911   2.269   0.0233 *  
as.factor(Localizacion)PORT  -15.2935  2163.9182   0.007   0.9944    
as.factor(Localizacion)SMO    -3.0012     0.7606   3.946 7.95e-05 ***
as.factor(Manejo)SILV          1.8125     0.7799   2.324   0.0201 *  
Edad                          -0.1965     0.1032   1.904   0.0569 .  
as.factor(Sexo)M               0.5015     0.4681   1.071   0.2840    
HL                            -0.9381     1.4244   0.659   0.5102    
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 

I would like represent the probability of infection (y) vs age (x), but using the estimate of my model.avg**

I tried with this script:

nseq <- function(x, len = length(x)) seq(min(x, na.rm = TRUE),max(x, na.rm=TRUE), length = len)

newdata <-[2:4], mean), rep, 213))
newdata$Edad <- nseq(data_silv$Edad, nrow(newdata))
(año <- sample(as.factor(data_silv$año),size=213,rep=T))
(Manejo <- sample(as.factor(data_silv$Manejo),size=213,rep=T))
(Sexo <- sample(as.factor(data_silv$Sexo),size=213,rep=T))
newdata <-$HL), año,Manejo,Sexo,
                 data_silv$Localizacion, nseq(data_silv$Edad, nrow(newdata)),
names(newdata) <- c("HL","año","Manejo","Sexo","Localizacion","Edad",

newdata$pred <- data.frame(
  model = sapply(a, predict, newdata = newdata),
  averaged.subset = predict(b, newdata, full = FALSE),
  averaged.full = predict(b, newdata, full = TRUE)

ggplot(newdata,aes(x="Edad",y="pred",color="Localizacion")) + geom_line()

But I haven't got graph...or I have error

Someone know any form to represent my model.avg with categorical and variable numeric?, But taking into account that I only want represent probability of infection vs age, with two line: localizacion1 and localizacion2...(localization had 2 factors).**

my original date would be this table:


año <- sample(as.factor(2005:2009),size=213,rep=T)
riqueza <- sample((0:3),size=213,rep=T)
HL <- rnorm(213, mean=0.54, sd=0.13)

Ancylostoma <- sample(as.factor(0:1),size=213,rep=T)

Edad <- sample(as.factor(0:21),size=213,rep=T)
Manejo<- sample(c("CCC", "SILV"), 213, replace = TRUE)
Sexo<- sample(c("M", "H"), 213, replace = TRUE)
Localizacion<- sample(c("SMO", "DON", "PORT"), 213, replace = TRUE)
Ancestria<- sample(c("DON", "SMO", "F1", "F2"), 213, replace = TRUE)

newdata <-,año,Manejo,Sexo,
                               Localizacion, Edad,Ancylostoma))

names(newdata) <- c("HL","año","Manejo","Sexo","Localizacion","Edad",


And with that date I make my model's estimates. Then I would like do prediction

Thank you, I don't sure if I am explaining well

I so sorry for my english

share|improve this question
If you can make a reproducible example (see ) I would be willing to take a crack at this. You will either need to post your data set somewhere, or find a data set that is appropriately complex (e.g. two categorical input variables, one of which needs to be averaged over and the other represented by multiple lines in the graph, and one continuous input variable). – Ben Bolker Sep 6 '13 at 15:22
I don't sure if I am explaining well...I have my estimates average of my model, and the I would like represent it, so I would like do prediction – user2754640 Sep 7 '13 at 16:53
the point of a reproducible example is that it makes it much easier to explain what you're aiming for, and for people to experiment. Did you read the link? – Ben Bolker Sep 7 '13 at 21:59
Yes, but I wasn't sure how should be the example, and wheter I had made was well.I added the example to my question – user2754640 Sep 8 '13 at 8:18

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