multible questions...
Dear all
I was wondering about the number of parameters in some of my models until I discovered the discussion between White/Cooch in the old MARK forum (No 266). So I am aware that in the result browser the number of parameters is the ones, which were assessable and not the number one might expect considering the selected model. (i.e. due to sparse data).
My data set contains 24 trapping occasions. I run the full time dependent model – as an option under pre defined models. The result browser shows me 45 parameters. 22 for phi and 22 for p - plus the beta estimate for the last of both. Fine. Then I open the PIM’s and run the same analysis again- fully time dependent. I did not even open the design matrix. In the result browser the model has the same deviance as before but a lower AIC and only 40 parameters.
Why?
In the full output of the model – after the input and before the summary (AIC, deviance, c hat etc) MARK states the number of function evaluations for (in my case) 46 parameters.
After the beta and real estimates MARK states
Attempted ordering of parameters by estimatibility:
38 37 41 40 43 36 44 39 45 35 34 32 31 29 42 23 33 30 18 28 27 8 12 21 15
26 25 5 14 16 1 24 10 22 7 4 6 11 3 2 46 17 19 20 13 9
Beta number 9 is a singular value.
The order of models is quiet different in (my) both cases. Again why?
In general if I expect i.e. 45 parameters and the result browser tells me 40 – does that mean the last 5 of the above mentioned statement are the ones which were not identified (or problematic). In fact they were - I can view them. How should they be treated?
I discovered this while playing with covariates and linear models. I tried to include effort in my model (for p) but not as a substitute for time but as an addition – meaning I run the analysis with the interaction model ( p= time + effort + time effort + error) and the additive model )p = time + effort + error).
In my case the additive model was really much better than the only time dependent one and the interaction model.
BUT = I could not compute most of the LRT tests. Additive model against interaction model. Additive (time + effort) model against time. The only ones which gave me a result was additive against effort. So – the basic question is - did it make sense in the first place to combine time and effort – after all I used the effort as a linear model plus time dependency.
Secondly - which lead me to all the first questions in the beginning: has the number of parameters (assessable or not) something to do with the LRT test. I tested as stated above only the nested models.
Sorry for the length of the message – I just wanted to be clear.
Many thanks in advance.
Christian
By the way – it might be useful to give a link to the old forum for new subscribers – a lot of subjects are discussed there. Maybe it is there – but it does not hit me when browsing the new forum.