Greetings to anyone who might help me! :P
I'm using the Nest Survival model in Program MARK associated with only one continuous covariate (distance from nests to highway). I've been following the 'gentle introduction' manual, but I'm having some difficulties with the model specifications.
After loading my INP file and opening the Parameter Index Matrix, I set all the values in the PIM to 1, so as to consider a constant Daily Survival Rate. Then I opened the reduced Design Matrix (as the manual instructs to do, if I've interpreted it correctly), which was when my first doubt arose. Considering I only have one covariate, I'm tempted to enter '1' as the number of covariates in the design matrix. However, based on the screencaps in the manual, it seems I should consider my data as having two covariates, so that the design matrix will have two columns. In this case, the first column (B1) contains the value '1', and the third column (B2) contains the name of my covariate ('Road', in this case).
Is this really the way it should be done? If so, what does the value '1' stand for in the B1 column? In fact, what do the B1 and B2 columns represent?
Despite my reservations, I ran this model and it presented a lower AICc (145,0260) than the model in which no covariates are considered (150,3574). Does this mean this model receives less support? If so, should I stick with the no-covariate model?
Out of curiosity, I ran the model considering only one covariate (i.e., one column with the name of my covariate). This one presented a hight AICc than the previous ones (167,9168). But is it incorrect, though?
One last thing, when I view estimates of real parameters I find the following message at the top:
Following estimates based on unstandardized individual covariate values:
Variable Value
--------- -------------
ROAD 233.50000
The value makes sense as one of the distances in the input file, but what does it mean?
I apologize for the long post and possibly 'noob' questions, but I admit I'm having a hard time with the program.
Thanks so much!
Alex