OlivierD wrote:Thanks.
So basically, a 10 00 00... history is interpreted as "survived the first interval", right? If the data set has 85% of such "transient" individuals, then one should expect the first-year survival to be biased high, or even stuck to the upper limit, no? Is there a way to avoid that?
A history of 10 00 00 isn't interpreted as anything. It was never encountered again. Period. As such, you can't say anything about whether or not it survived.
You're missing the larger point. Transience (sensu Pradel et al.) is a a limiting form of heterogeneity, wherein a transient is defined as an individual for whom the probability of remaining in the sample is 0 after the initial marking attempt. (This is described in *much* detail for live encounter studies in Chapter 7 -- section 7.4) In the simplest case, a transient is an individual marked at time (i) which permanently emigrates the sampling area between (i) and (i+1), such that the probability of subsequent encounter is 0. The estimation of the proportion of residents is then given by (i) the survival probability for the first interval after marking (first TSM class), which is clearly biased low by the presence of some proportion of transients in the sample, (ii) divided by the estimate of survival for residents (second TSM class) for the same interval. Then, the proportion of transients is simply 1-proportion of residents.
So, in a recovery analysis, what would a transient individual be? Again, in the live encounter case, the calculation of the proportion of transients is a function of the fact that a transient is operationally defined as an individual with F=0 after initial marking event, such that the probability of subsequent encounter is 0. The assumption being that only individuals alive *and* in the sample can be encountered. For a dead recovery analysis to be comparable, you'd have to have a situation where the possibility of a dead recovery for a transient individual is 0, which could in theory be the case if you're working with a system where dead recoveries are detected/reported only in the sampling region. In that case, you'd have much the same situation as with a live encounter study, and you could, in theory, look at transience, if you make the same operational definition that Pradel did originally. The moment you can have a dead recovery outside the sampling region is the moment that your definition of transience starts to break down.
Another approach (given the data) would be to consider a Burnham live-encounter/dead recovery analysis, where you assume that dead recoveries occur outside the sampling region (and that only live encounters occur within the sampling region). This data type allows you to parse out true survival from emigration, and again is potentially an interesting way to look at the proportion of transients.
Again, the key is to think hard about what you mean by transient -- it could have a spatial definition, a temporal definition, or both. The specifics of that definition would ultimately determine whether or not you could use a dead recovery analysis alone to pull things apart.