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Fitting models to data

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458. Fitting models to data III (More on Maximum Likelihood Estimation) ... A Cod Example (model assumptions) The catch is taken in the ... A Cod Example ... – PowerPoint PPT presentation

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Title: Fitting models to data


1
Fitting models to data III(More on Maximum
Likelihood Estimation)
  • Fish 458, Lecture 10

2
A Cod Example (model assumptions)
  • The catch is taken in the middle of the year.
  • The catch-at-age and M are known exactly.
  • We can therefore compute all the numbers-at-age
    given those for the oldest age

3
A Cod Example (data assumptions)
  • We have survey data for ages 2-14 (the catch data
    start in 1959)
  • A trawl survey index (1983-99) surveys are
    conducted at the end of January and at the end of
    March.
  • A gillnet index (1994-98) surveys are conducted
    at the start of the year.
  • We need to account for when the surveys occur
    (because fishing mortality can be very high).
  • We assume that the age-specific indices are
    log-normally distributed about the model
    predictions (indices cant be negative) and ? is
    assumed to differ between the two survey series
    but to be the same for each age within a survey
    index.

4
Calculation details the model
Oldest-age Ns
The terminal numbers-at-age determine the whole
N matrix
Most-recent- year Ns (year ymax)
Terminal numbers-at-age
5
Calculation details the likelihood
  • The likelihood function

6
Fitting this Model
  • The parameters
  • We reduce the number of parameters that are
    included in the Solver search by using analytical
    solutions for the qs and the ?s.

7
Analytical Solution for q-I
Being able to find analytical solutions for q and
? is a key skill when fitting fisheries
population dynamics models.
8
Analytical Solution for q-II
Repeat this calculation for
9
The Binomial Distribution
  • The density function
  • Z is the observed number of outcomes
  • N is the number of trials and
  • p is the probability of the event happening on a
    given trial.
  • This density function is used when we have
    observed a number of events given a fixed number
    of trials (e.g. annual deaths in a population of
    known size). Note that the outcome, Z, is
    discrete (an integer between 0 and N).

10
The Multinomial Distribution
  • Here we extend the binomial distribution to
    consider multiple possible events
  • Note
  • We use this distribution when we age a sample of
    the population / catch (N is the sample size) and
    wish to compare the model prediction of the age
    distribution of the population / catch with the
    sample.

11
An Example of The Binomial Distribution-I
10 animals in each of 17 size-classes have been
assessed for maturity. Fit the following logistic
function to these data.
12
An Example of The Binomial Distribution-II
  • We should assume a binomial distribution (because
    each animal is either mature or immature).
  • The likelihood function is
  • The negative log-likelihood function is

is the number mature in size-class i
13
An Example of The Binomial Distribution-III
14
An Example of The Binomial Distribution-III
  • An alternative to the binomial distribution is
    the normal distribution. The negative
    log-likelihood function for this case is
  • Why is the normal distribution inappropriate for
    this problem?

15
The Beta distribution
  • The density function
  • The mean of this distribution is

16
The Shapes of the Beta Distribution
17
Recap Time
  • To apply Maximum Likelihood we
  • Find a model for the underlying process.
  • Identify how the data relate to this model (i.e.
    which error / sampling distribution to use).
  • Write down the likelihood function.
  • Write down the negative log-likelihood.
  • Minimize the negative log-likelihood.
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