count based pva: density-independent models. count data of the entire population of a subset of the...

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Count Based PVA: Density-Independent Models

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The theoretical results that underlie the simplest count-based methods in PVA. The model for discrete geometric population growth in a randomly varying environment N t+1 =λ t N t Assumes that population growth is density independent (i.e. is not affected by population size, N t ) Population dynamics in a random environment

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Page 1: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Count Based PVA:

Density-Independent Models

Page 2: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Count Data

• Of the entire population• Of a subset of the population (“as long as

the segment of the population that is observed is a relatively constant fraction of the whole”)

• Censused over multiple (not necessarily consecutive years

Page 3: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

• The theoretical results that underlie the simplest count-based methods in PVA. The model for discrete geometric population growth in a randomly varying environment

Nt+1=λtNt

Assumes that population growth is density independent (i.e. is not affected by population size, Nt)

Population dynamics in a random environment

Page 4: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Nt+1=λtNt

• If there is no variation in the environment from year to year, then the population growth rate λ will be constant, and only three qualitative types of population growth are possible

Geometric increase

Geometric decline

Stasis

λ>1

λ<1

λ=1

Page 5: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

By causing survival and reproduction to vary from year to year, environmental variability will cause the population growth rate, to vary as well • A stochastic process

Page 6: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Three fundamental features of stochastic population growth

• The realizations diverge over time • The realizations do not follow very well the

predicted trajectory based upon the arithmetic mean population growth rate

• The end points of the realizations are highly skewed

Page 7: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

t=10 t=20

t=40t=50

Page 8: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

The best predictor of whether Nt will increase or decrease over the long term is

λG

Nt+1=(λt λt-1 λt-2 …λ1 λ0) No

(λG)t =λt λt-1 λt-2 …λ1 λ0 ;or

• Since

λG is defined as

λG =(λt λt-1 λt-2 …λ1 λ0)(1/t)

Page 9: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Converting this formula for λG to the log scale

μ= lnλG =lnλt+ln λt-1+ …lnλ1 +ln λ0 t

The correct measure of stochastic population growth on a log scale, μ, is equal to the lnλG or equivalently, to the arithmetic mean of the ln λt values.

μ>0, then λ>1 the most populations will growμ<0, then λ<1 the most populations will decline

Page 10: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

t=15

1 2 3 4 5 6 7 80

1

2

3

4

5

6

-200 0 200 400 600 800 1000 1200 1400 16000

1

2

3

4

5

6

1 2 3 4 5 6 7 80

1

2

3

4

5

6

-200 0 200 400 600 800 1000 1200 1400 16000

1

2

3

4

5

6

t=30

N ln(N)

N Ln(N)

0 10 20 30 40 503

4

5

6

7

8

ln(N)

t

Page 11: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

To fully characterize the changing normal distribution of log population size we need

two parameters:• μ: the mean of the log population

growth rate

• σ2 : the variance in the log population growth rate

Page 12: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

0 2 4 6 8 10 12 14 16 18 20

-6

-4

-2

0

2

4

6

8

Page 13: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

0 2 4 6 8 10 12 14 16 18 20

-6

-4

-2

0

2

4

6

8

Page 14: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

The inverse Gaussian distribution

• g(t μ,σ2,d)= (d/√2π σ2t3)exp[-(d+ μt)2/2σ2t]

• Where d= logNc-Nx

• Nc = current population size• Nx =extinction threshold

Page 15: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

To calculate the probability that the threshold is reached at any time between the present (t=0) and

a future time of interest (t=T), we integrate

• G(T d,μ,σ2)= Φ(-d-μT/√σ2T)+ • exp[-2μd/ σ2) Φ(-d-μT/√σ2T)

• Where Φ(z) (phi) is the standard normal cumulative distribution function

The Cumulative distribution function for the time to quasi-extinction

Page 16: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Calculated by taking the integral of the inverse Gaussian distribution from t=0 to t =inf

• G(T d,μ,σ2)=1 when μ< 0• exp(-2μd/ σ2) when μ>0

The probability of ultimate extinction

Page 17: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Three key assumptions

• Environmental perturbations affecting the population growth rate are small to moderate (catastrophes and bonanzas do not occur)

• Changes in population size are independent between one time interval and the next

• Values of μ and σ2 do not change over time

Page 18: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Estimating μ,σ2

• Lets assume that we have conducted a total of q+1 annual censuses of a population at times t0, t1, …tq, having obtained the census counts N0, N1, …Nq+1

• Over the time interval of length (ti+1 – ti)Years between censuses i and i+1 the logs of the

counts change by the amount log(Ni+1 – Ni)= log(Ni+1/Ni)=logλi

where λi=Ni+1/Ni

Page 19: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Estimating μ,σ2

• μ as the arithmetic mean• σ2 as the sample variance

• Of the log(Ni+1/Ni)

Page 20: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Female Grizzly bears in the Greater Yellowstone

0

20

40

60

80

100

120

1950 1970 1990

Year

Adul

t Fem

ales

.

Page 21: Count Based PVA: Density-Independent Models. Count Data Of the entire population Of a subset of the population (“as long as the segment of the population

Estimating μ,σ2

• μ =0.02134; σ2 =0.01305

Model R R SquareAdjusted R

Square

Std. Error of the Estimate Durbin-Watson

1 0.186005 0.034598 0.008506 0.114241 2.570113

ANOVA

Model Sum of Squares df Mean Square F Sig.

1 Regression 0.017305 1 0.017305 1.325996 0.256906

Residual 0.482884 37 0.013051

Total 0.500189 38

Coefficients

Model Unstandardized Coefficients Standardized Coefficients t Sig.

B Std. Error Beta

1 INTERVAL 0.02134 0.018532 0.186005 1.151519 0.256906