Data: Figure 5 (plus 10 years)

Make data vectors, calculate lambda, and put together dataframe with all necessary data.

census

The census period; an index from 1 to 39 of how many years of data have been collected.

census <- 1:39

year t

The year: 1959 to 1997 (Dennis et al use 1959-1987)

year.t   <- 1959:1997

Population size

Population size is recorded as the number of females with …

females.N <- c(44,47,46,44,46,
               45,46,40,39,39,
               42,39,41,40,33,
               36,34,39,35,34,
               38,36,37,41,39,
               51,47,57,48,60,
               65,74,69,65,57,
               70,81,99,99)

Population growth rate: example

Population growth rate is (or can be expressed as) the ratio of population sizes

Enter the population size for each year

females.N.1959 <- 44
females.N.1960 <- 47

Calculate the ratio of the 2 population sizes

lambda.59_60 <- females.N.1960/females.N.1959

Access the population sizes by using bracket notation rather than hard coding

# Access the data
females.N[2]
#> [1] 47
females.N[1]
#> [1] 44

# store in objects
females.N.1959 <- females.N[2]
females.N.1960 <- females.N[1]

# confirm the output
females.N.1960/females.N.1959
#> [1] 0.9361702

Calculate lambda using bracket notation

lambda.59_60 <- females.N[2]/females.N[1]

The first year of data is 1959. What is lambda for 1958 to 1959?

females.N[1]
#> [1] 44
#this can't be calculated, as we have no data for the year 1958
#lambda.58_59 <- females.N[1]/females.N[ ]

Population growth rate: vectorized

TASK

Briefly describe (1-2 sentence) what this code is doing.

#This code chunk is again calculating lambda, but for the two years in the range instead of one

females.N[2:3]
#> [1] 47 46
females.N[1:2]
#> [1] 44 47

females.N[2:3]/females.N[1:2]
#> [1] 1.0681818 0.9787234

This is similar to the previous code chunk, just using all of the data (no need to describe)

length(females.N)
#> [1] 39
females.N[2:39]/females.N[1:38]
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000

TASK What does this do? Briefly describe in 1 to 2 sentences why I am using length().

#This calculates lambda for every year for the data is given. Using length() allows us to create a similar formulation to the last task, without coding hard numbers into the program.

len <- length(females.N)
females.N[2:len]/females.N[1:len-1]
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000

TASK What does this do? Briefly describe in 1 to 2 sentences what is different about this code chunk from the previous one.

#This code computes the same values as the last task, but skips the step of defining a len variable


females.N[2:length(females.N)]/females.N[1:length(females.N)-1]
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000

Negative indexing

Make a short vector to play with; first 10 years

females.N[1:10]
#>  [1] 44 47 46 44 46 45 46 40 39 39
females.Ntemp <- females.N[1:10]

Check - are there 10 numbers?

length(females.Ntemp)
#> [1] 10

TASK

What does this do? Briefly describe what the [-1] is doing.

This drops the first element of the vector, returning the next nine

females.Ntemp[-1]
#> [1] 47 46 44 46 45 46 40 39 39

TASK How many lambdas can I calculate using the first 10 years of data?

We can calculate n-1 lambdas given n years of data. Thus, with the first 10 years of data, we can calculate 9 lambda values.

females.Ntemp[2:10]/females.Ntemp[1:9]
#> [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#> [8] 0.9750000 1.0000000

“Negative indexing” allows you to drop a specific element from a vector.

TASK Drop the the first element

females.Ntemp[-1]
#> [1] 47 46 44 46 45 46 40 39 39

TASK Drop the second element

females.Ntemp[-2]
#> [1] 44 46 44 46 45 46 40 39 39

TASK

How do you drop the 10th element? Type in the code below.

females.Ntemp[-10]
#> [1] 44 47 46 44 46 45 46 40 39

TASK How do you access the last element? Do this in a general way without hard-coding.

females.Ntemp[length(females.Ntemp)]
#> [1] 39

TASK How do DROP the last element? Do this in a general way without hard-coding. By general, I mean in a way that if the length of the vector females.Ntemp changed the code would still drop the correct element.

females.Ntemp[-length(females.Ntemp)]
#> [1] 44 47 46 44 46 45 46 40 39

TASK Calculate the first 9 lambdas.

lambda.i <- females.Ntemp[-1]/females.Ntemp[-10]

Converting between these 2 code chunks would be a good test question : )

lambda.i <- females.Ntemp[-1]/females.Ntemp[-length(females.Ntemp)]

Calcualte lambdas for all data

TASK

Below each bulleted line describe what the parts of the code do. Run the code to test it.

Drops the first element of Females.N

TASK Calculate lambdas for all of the data

females.N[-1]
#>  [1] 47 46 44 46 45 46 40 39 39 42 39 41 40 33 36 34 39 35 34 38 36 37 41 39 51
#> [26] 47 57 48 60 65 74 69 65 57 70 81 99 99
females.N[-length(females.N)]
#>  [1] 44 47 46 44 46 45 46 40 39 39 42 39 41 40 33 36 34 39 35 34 38 36 37 41 39
#> [26] 51 47 57 48 60 65 74 69 65 57 70 81 99

lambda.i <- females.N[-1]/females.N[-length(females.N)]

Finish putting together dataframe

Create special columns

TASK

What does this code do? Why do I include NA in the code? (I didn’t cover this in lecture, so just type 1 line - your best guess. “I don’t know” is fine.)

After looking it up, NA refers to missing values in R - presumably the values dropped when we used negative indexing

lambda.i <- c(lambda.i,NA)

TASK

Check the help file; what type of log does log() calculate (I forgot to put this question on the test!)

By default, log() calculates natural logarithms

lambda_log <- log(lambda.i)

Assemble the dataframe

bear_N <- data.frame(census,
                year.t,
                females.N,
                lambda.i, 
                lambda_log)

TASK

List 3 functions that allow you to examine this dataframe.

  1. length()
  2. summary()
  3. is.data.frame()

Examing the population growth rates

Plotting the raw data

TASK

  • Plot a time series graph of the number of bears (y) versus time (x)
  • Label the y axis “Population index (females + cubs)”
  • Label the x axis “Year”
  • Change the plot to type = “b” so that both points and dots are shown.

plot(females.N ~ year.t, data = bear_N, type = "b", ylab = "Population index (females + cubs)", xlab = "Year")

Bears love to eat trash. Yellowstone closed the last garbage dump in 1970 https://www.yellowstonepark.com/things-to-do/yellowstone-bears-no-longer-get-garbage-treats

#Beginning of Thursday’s code

plot(females.N ~ year.t, data = bear_N, 
     type = "b",
     ylab = "Population index (females + cubs)",
     xlab = "Year")
abline(v = 1970)

How do we determine if a population is likely to go extinct?

We randomly generate population growth rates to model pop. dynamics

hat_of_lambdas <- bear_N$lambda.i
is.na(hat_of_lambdas)
#>  [1] FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE
#> [13] FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE
#> [25] FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE
#> [37] FALSE FALSE  TRUE
any(is.na(hat_of_lambdas) == TRUE)
#> [1] TRUE

Drop the NA

length(hat_of_lambdas)
#> [1] 39
hat_of_lambdas[39]
#> [1] NA
hat_of_lambdas[-39]
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000
hat_of_lambdas[-length(hat_of_lambdas)]
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000
na.omit(hat_of_lambdas)
#>  [1] 1.0681818 0.9787234 0.9565217 1.0454545 0.9782609 1.0222222 0.8695652
#>  [8] 0.9750000 1.0000000 1.0769231 0.9285714 1.0512821 0.9756098 0.8250000
#> [15] 1.0909091 0.9444444 1.1470588 0.8974359 0.9714286 1.1176471 0.9473684
#> [22] 1.0277778 1.1081081 0.9512195 1.3076923 0.9215686 1.2127660 0.8421053
#> [29] 1.2500000 1.0833333 1.1384615 0.9324324 0.9420290 0.8769231 1.2280702
#> [36] 1.1571429 1.2222222 1.0000000
#> attr(,"na.action")
#> [1] 39
#> attr(,"class")
#> [1] "omit"
hat_of_lambdas <- hat_of_lambdas[-length(hat_of_lambdas)]
hist(hat_of_lambdas)

We will generate random values for lambda, and save these value to objects

We use “replace = TRUE” to make sure that previous values of lambda do not affect subsequent trials

# generate random lambda
sample(x = hat_of_lambdas, size = 1,replace = TRUE)
#> [1] 0.9565217
lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
lambda_rand.t
#> [1] 0.975

Analyze data frame

Head/tail show first/last 6 values of data frame


head(bear_N)
#>   census year.t females.N  lambda.i  lambda_log
#> 1      1   1959        44 1.0681818  0.06595797
#> 2      2   1960        47 0.9787234 -0.02150621
#> 3      3   1961        46 0.9565217 -0.04445176
#> 4      4   1962        44 1.0454545  0.04445176
#> 5      5   1963        46 0.9782609 -0.02197891
#> 6      6   1964        45 1.0222222  0.02197891
tail(bear_N)
#>    census year.t females.N  lambda.i lambda_log
#> 34     34   1992        65 0.8769231 -0.1313360
#> 35     35   1993        57 1.2280702  0.2054440
#> 36     36   1994        70 1.1571429  0.1459539
#> 37     37   1995        81 1.2222222  0.2006707
#> 38     38   1996        99 1.0000000  0.0000000
#> 39     39   1997        99        NA         NA
summary(bear_N)
#>      census         year.t       females.N        lambda.i     
#>  Min.   : 1.0   Min.   :1959   Min.   :33.00   Min.   :0.8250  
#>  1st Qu.:10.5   1st Qu.:1968   1st Qu.:39.00   1st Qu.:0.9452  
#>  Median :20.0   Median :1978   Median :44.00   Median :1.0000  
#>  Mean   :20.0   Mean   :1978   Mean   :49.79   Mean   :1.0281  
#>  3rd Qu.:29.5   3rd Qu.:1988   3rd Qu.:57.00   3rd Qu.:1.1038  
#>  Max.   :39.0   Max.   :1997   Max.   :99.00   Max.   :1.3077  
#>                                                NA's   :1       
#>    lambda_log      
#>  Min.   :-0.19237  
#>  1st Qu.:-0.05639  
#>  Median : 0.00000  
#>  Mean   : 0.02134  
#>  3rd Qu.: 0.09874  
#>  Max.   : 0.26826  
#>  NA's   :1
dim(bear_N)
#> [1] 39  5

N.1997 <- 99

Population Sim. Round 1

Assuming base year of 1997, find predicted bears in 1998


1.22807*99
#> [1] 121.5789
lambda_rand.t*N.1997
#> [1] 96.525
N.1998 <- lambda_rand.t*N.1997

Simulation (the hard way)

Hard code generation of random values individually, resembles process in Excel

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.1998 <- lambda_rand.t*N.1997

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.1999 <- lambda_rand.t*N.1998

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2000 <- lambda_rand.t*N.1999

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2001 <- lambda_rand.t*N.2000

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2002 <- lambda_rand.t*N.2001

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2003 <- lambda_rand.t*N.2002

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2004 <- lambda_rand.t*N.2003

lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
N.2005 <- lambda_rand.t*N.2004

Plot Population change

Graph previous results

year <- seq(1997, 2004)
N.rand <- c(N.1998,N.1999,N.2000,N.2001,N.2002,N.2003,N.2004,N.2005)
df.rand <- data.frame(N.rand, year)
plot(N.rand ~ year, data = df.rand, type = "b")

Plot using (beginnings) of for loop

We have the overall structure of the for() loop argument

# Initial conditions

N.1997 <- 99
N.initial <- 99

# EXplore xlim = argument
plot(N.1997 ~ c(1997))

plot(N.1997 ~ c(1997), xlim = c(1997, 1997+50))

plot(N.1997 ~ c(1997), xlim = c(1997, 1997+50), ylim = c(0, 550))

# For loop (the hard way)

N.current <- N.initial

# this is where the for loop would be
t <- 1
  
  # grab a lambda
  lambda_rand.t <- sample(x = hat_of_lambdas, size = 1,replace = TRUE)
  
  # determine pop size
  N.t <- N.current*lambda_rand.t
  
  # determine year
  year.t <- 1997+t
  
  # plot population
  points(N.t ~ year.t)

  
  # update year t
  N.current <- N.t

Make a new plot


# Make a new plot
plot(N.1997 ~ c(1997), xlim = c(1997, 1997+50), ylim = c(0, 550))

# start at 1997 pop.
N.current <- N.1997

# begin for loop
for(t in 1:50){
  
  # get lambda
  lambda_rand.t <- sample(x = hat_of_lambdas, 
                          size = 1,
                          replace = TRUE)
  
  # determine pop size
  N.t <- N.current*lambda_rand.t
  
  # determine year
  year.t <- 1997+t
  
  # plot population
  points(N.t ~ year.t)
  
  # update year t
  N.current <- N.t
}