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Closed Vs. Open Population Models

Closed Vs. Open Population Models . Mark L. Taper Department of Ecology Montana State University. Fundamental Assumption of Closed Population Models. Births, Immigration, Deaths, & Emmigration do not occur Ecologists are deeply interested in these processes

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Closed Vs. Open Population Models

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  1. Closed Vs. Open Population Models Mark L. Taper Department of Ecology Montana State University

  2. Fundamental Assumption of Closed Population Models • Births, Immigration, Deaths, & Emmigration do not occur • Ecologists are deeply interested in these processes • Open population models relax this assumption in various ways

  3. Two Classes of Open Models • Conditional models • Cormack-Jolly-Seber (CJS) models • Calculations conditional on 1st captures • Unconditional models • Jolly-Seber (JS) models • Calculations model capture process aswell

  4. Cormack-Jolly-Seber approachmodels both survival and captures

  5. New captures possible each session

  6. Capture Histories /* European Dipper Data, Live Recaptures, 7 occasions, 2 groups Group 1=Males Group 2=Females */ 1111110 1 0 ; 1111100 0 1 ; 1111000 1 0 ; 1111000 0 1 ; 1101110 0 1 ; 1100000 1 0 ; 1100000 1 0 ; 1100000 1 0 ; 1100000 1 0 ; 1100000 0 1 ; 1100000 0 1 ; 1010000 1 0 ; 1010000 0 1 ; 1000000 1 0 ; 1000000 1 0 ; 1000000 1 0 ;

  7. Building CJS capture histories probabilities Survey 1 Survey 2 capture history probability Φ1p2 caught 11 p2 1-p2 Φ1 Alive not caught Φ1(1-p2) 10 Caught, Marked, & Released 1-Φ1 1 - Φ1p2 10 Dead (1-Φ1)

  8. 3 session capture history uiis the number of individuals first captured on session i (i=1..K-1)

  9. Attributes of capture histories • If ends in 1 all intervening φi are in probability and pi or (1-pi) depending on 1 or 0 in ith position. • If ends in 0 need to include all the ways no observation could be made • φ2 and p3 always occur together. NON-identifiable. • Probabilities conditional because only begin calculating probabilities after individuals first seen.

  10. Removal/loss after last capture

  11. Capture Histories /* European Dipper Data, Live Recaptures, 7 occasions, 2 groups Group 1=Males Group 2=Females */ 1111110 1 0 ; 1111100 0 1 ; 1111000 1 0 ; 1111000 0 -1 ; 1101110 0 1 ; 1100000 -1 0 ; 1100000 1 0 ; 1100000 1 0 ; 1100000 1 0 ; 1100000 0 1 ; 1100000 0 1 ; 1010000 1 0 ; 1010000 0 1 ; 1000000 1 0 ; 1000000 1 0 ; 1000000 1 0 ;

  12. A multinomial likelihood

  13. Program Mark Example:Estimation of CJS model for European Dipper Read data Specify format Run basic CJS View Parameter estimates Graph Parameter Estimates

  14. Jolly-Seber models • CJS approach models recaptures of previously captured individuals • Estimates survival probabilities • JS approach models recaptures of previously captured individuals and 1st capture process. • Estimates “population sizes” and recruitment

  15. General Jolly-Seber assumptions • Equal catchability of marked and unmarked animals • Equal survival of marked and unmarked animals • Tag retention • Accurate identification • Constant study area

  16. Jolly-Seber original formulation -The number of marked and unmarked individual in population i.e.Mi and Ui Are now parameters to be estimated. -Builds on previous likelihood by adding binomial components

  17. Not implemented in Mark • Rcapture (an R package) • Program JOLLY • Program JOLLYAGE

  18. POPAN formulation

  19. Burnham and Pradel formulation

  20. Choosing formulations All formulations include φ and p parameters

  21. Considerations for choosing formulations • Match of biology with formulation • Explicit representation of parameters of interest. • Likelihood based inference • Constraints on parameter space.

  22. The Robust DesignMerging Open & Closed models • More precise estimates • Less biased estimates • More kinds of estimable parameters • Fewer restrictive assumptions • Greater realism • More complexity

  23. Mixing Open and Closed

  24. Explosion of capture models

  25. Exposes hidden structure which cause bias and uncertainty

  26. SECR Density Spatially Explicit Capture Recapture R package and Windows programs by MG Efford

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