N ‐Mixture Models for Estimating Population Size from Spatially Replicated Counts
United States Fish and Wildlife Service
Abstract
Spatial replication is a common theme in count surveys of animals. Such surveys often generate sparse count data from which it is difficult to estimate population size while formally accounting for detection probability. In this article, I describe a class of models (N-mixture models) which allow for estimation of population size from such data. The key idea is to view site-specific population sizes, N, as independent random variables distributed according to some mixing distribution (e.g., Poisson). Prior parameters are estimated from the marginal likelihood of the data, having integrated over the prior distribution for N. Carroll and Lombard (1985, Journal of American Statistical Association 80, 423-426)…
Citation impact
- FWCI
- 12.20
- Percentile
- 100%
- References
- 17
Authors
1Topics & keywords
- Estimator
- Statistics
- Poisson distribution
- Population
- Count data
- Mathematics
- Replication (statistics)
- Point estimation