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Explore the Age-from-Stage theory in demographic modeling, focusing on Markov chains and survivorship analysis in variable environments. Discover how to predict stage-specific probabilities and mortality rates at different ages.
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Age-from-stage theory What is the probability an individual will be in a certain state at time t, given initial state at time 0?
Age-from-stage theory • Markov chains, absorbing states • An individual passes through various stages before being absorbed, e.g. dying • What is the probability it will be in certain stage at age x (time t), given initial stage? • The answer can be found by extracting information from stage-based population projection matrices Cochran and Ellner 1992, Caswell 2001 Tuljapurkar and Horvitz 2006, Horvitz and Tuljapurkar in review
Age-specific demographic rates from stage based models? • Life Expectancy • Stage structure at each age • Survivorship to age x, l(x) • Mortality at age x, μ(x)
Empirically-basedstage structured demography • Cohorts begin life in particular stage • Ontogenetic stage/size/reproductive status are known to predict survival and growth • Survival rate does not determine order of stages
A is population projection matrixF is reproductiondeath is an absorbing state
Q’s and S’s in a variable environment At each age, A(x) is one of {A1, A2, A3…Ak} and Q(x) is one of {Q1, Q2, Q3…Qk} and S(x) is one of {S1, S2, S3…SK} Stage-specific one-period survival
Cohort dynamicswith stage structure, variable environment Individuals are born into stage 1 N(0) = [1, 0, … ,0]’ As the cohort ages, its dynamics are given by N(x+1) = X (t) N (x), X is a random variable that takes on values Q1, Q2,…,QK
Cohort dynamicswith stage structure As the cohort ages, it spreads out into different stages and at each age x, we track l(x) = ΣN(x) survivorship of cohort U(x) = N(x)/l(x) stage structure of cohort
Mortality from weighted average of one-period survivals one period survival of cohort at age x = stage-specific survivals weighted by stage structure l(x+1)/l(x) = < Z (t), U(x) > Z is a random variable that takes on values S1, S2,…,SK Mortality rate at age x μ(x) = - log [ l(x+1)/l(x) ]
Mortality directly from survivorship • Survivorship to age x , l(x),is given by the sum of column 1* of • Powers of Q (constant environment) • Random matrix product of Q(x)’s (variable environment) • Age-specific mortality, the risk of dying soon after reaching age x, given that you have survived to age x, is calculated as, μ(x) = - log [ l(x+1)/l(x)] asymptotically, μ(x) = - log λQ __________________________________ *assuming individuals are born in stage 1
N, “the Fundamental Matrix”and Life Expectancy • Constant: • N = I + Q1 + Q2 + Q3 + …+QX • which converges to (I-Q) -1 • Life expectancy: column sums of N • e.g., for stage 1, column 1 • Variable: • N = I + Q(1) + Q(2)Q(1) + Q(3)Q(2)Q(1)+ …etc • which is NOT so simple; described for several cases in Tuljapurkar and Horvitz 2006 • Life expectancy: column sums of N • e.g., for stage 1, column 1
Mortality plateau in variable environments Megamatrix μm= - logλm Before the plateau things are a little messier, powers of the megamatrix pre-multiplied by the initial environment’s Q c22
Environmental variability: types Each diagram represents a matrix of transitions among environmental states; the dots show the relative probability of changing states or remaining (indicated with a +) in a state over one time step.
Variable environment: Example Understory subtropical shrub • 8 life history stages • Seeds, seedlings, juveniles, pre-reproductives, reproductives of 4 sizes • Markovian environment: hurricane driven canopy dynamics • 7 environmental states • State 1 is very open canopy, lots of light • State 7 is closed canopy, quite dark
Mean matrix as if it were a constant environ-ment μmean= 0.01584
Long run dynamics: stationary distribution of stage distributions Time after 39,000
Enough theory • Let’s do it!