Euler–Lotka Equation
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In the study of age-structured population growth, probably one of the most important equations is the Euler–Lotka equation. Based on the age demographic of females in the population and female births (since in many cases it is the females that are more limited in the ability to reproduce), this equation allows for an estimation of how a population is growing. The field of mathematical
demography Demography () is the statistical study of populations, especially human beings. Demographic analysis examines and measures the dimensions and dynamics of populations; it can cover whole societies or groups defined by criteria such as edu ...
was largely developed by Alfred J. Lotka in the early 20th century, building on the earlier work of
Leonhard Euler Leonhard Euler ( , ; 15 April 170718 September 1783) was a Swiss mathematician, physicist, astronomer, geographer, logician and engineer who founded the studies of graph theory and topology and made pioneering and influential discoveries in ma ...
. The Euler–Lotka equation, derived and discussed below, is often attributed to either of its origins: Euler, who derived a special form in 1760, or Lotka, who derived a more general continuous version. The equation in discrete time is given by :1 = \sum_^\omega \lambda^\ell(a)b(a) where \lambda is the discrete growth rate, ''ℓ''(''a'') is the fraction of individuals surviving to age ''a'' and ''b''(''a'') is the number of offspring born to an individual of age ''a'' during the time step. The sum is taken over the entire life span of the organism.


Derivations


Lotka's continuous model

A.J. Lotka in 1911 developed a continuous model of population dynamics as follows. This model tracks only the females in the population. Let ''B''(''t'')''dt'' be the number of births during the time interval from ''t'' to ''t+dt''. Also define the
survival function The survival function is a function that gives the probability that a patient, device, or other object of interest will survive past a certain time. The survival function is also known as the survivor function or reliability function. The te ...
''ℓ''(''a''), the fraction of individuals surviving to age ''a''. Finally define ''b''(''a'') to be the birth rate for mothers of age ''a''. The product ''B''(''t-a'')''ℓ''(''a'') therefore denotes the number density of individuals born at ''t-a'' and still alive at ''t'', while ''B''(''t-a'')''ℓ''(''a'')''b''(''a'') denotes the number of births in this cohort, which suggest the following
Volterra integral equation In mathematics, the Volterra integral equations are a special type of integral equations. They are divided into two groups referred to as the first and the second kind. A linear Volterra equation of the first kind is : f(t) = \int_a^t K(t,s)\,x(s ...
for ''B'': : B(t) = \int_0^t B(t - a )\ell(a)b(a) \, da. We integrate over all possible ages to find the total rate of births at time ''t''. We are in effect finding the contributions of all individuals of age up to ''t''. We need not consider individuals born before the start of this analysis since we can just set the base point low enough to incorporate all of them. Let us then guess an
exponential Exponential may refer to any of several mathematical topics related to exponentiation, including: *Exponential function, also: **Matrix exponential, the matrix analogue to the above *Exponential decay, decrease at a rate proportional to value *Expo ...
solution of the form ''B''(''t'') = ''Qe''''rt''. Plugging this into the integral equation gives: :Qe^ = \int_0^t Q e^\ell(a)b(a) \, da or : 1 = \int_0^t e^\ell(a)b(a) \, da. This can be rewritten in the
discrete Discrete may refer to: *Discrete particle or quantum in physics, for example in quantum theory *Discrete device, an electronic component with just one circuit element, either passive or active, other than an integrated circuit *Discrete group, a g ...
case by turning the integral into a sum producing :1 = \sum_^\beta e^\ell(a)b(a) letting \alpha and \beta be the boundary ages for reproduction or defining the discrete growth rate ''λ'' = ''e''''r'' we obtain the discrete time equation derived above: :1 = \sum_^\omega \lambda^\ell(a)b(a) where \omega is the maximum age, we can extend these ages since ''b''(''a'') vanishes beyond the boundaries.


From the Leslie matrix

Let us write the
Leslie matrix The Leslie matrix is a discrete, age-structured model of population growth that is very popular in population ecology named after Patrick H. Leslie. The Leslie matrix (also called the Leslie model) is one of the most well-known ways to describe ...
as: :\begin f_0 & f_1 & f_2 & f_3 & \ldots &f_ \\ s_0 & 0 & 0 & 0 & \ldots & 0\\ 0 & s_1 & 0 & 0 & \ldots & 0\\ 0 & 0 & s_2 & 0 & \ldots & 0\\ 0 & 0 & 0 & \ddots & \ldots & 0\\ 0 & 0 & 0 & \ldots & s_ & 0 \end where s_i and f_i are survival to the next age class and per capita fecundity respectively. Note that s_i = \ell_/\ell_i where ''ℓ'' ''i'' is the probability of surviving to age i, and f_i = s_ib_, the number of births at age i + 1 weighted by the probability of surviving to age i+1. Now if we have stable growth the growth of the system is an
eigenvalue In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
of the matrix since \mathbf = \mathbf = \lambda \mathbf. Therefore, we can use this relationship row by row to derive expressions for n_i in terms of the values in the matrix and \lambda. Introducing notation n_ the population in age class i at time t, we have n_ = \lambda n_. However also n_ = s_0n_. This implies that :n_ = \fracn_. \, By the same argument we find that :n_ = \fracn_ = \fracn_. Continuing inductively we conclude that generally :n_ = \fracn_. Considering the top row, we get :n_ = f_0n_ + \cdots + f_n_ = \lambda n_. Now we may substitute our previous work for the n_ terms and obtain: :\lambda n_ = \left(f_0 + f_1\frac + \cdots + f_\frac\right)n_. First substitute the definition of the per-capita fertility and divide through by the left hand side: :1 = \frac + \frac + \cdots + \frac. Now we note the following simplification. Since s_i = \ell_/\ell_i we note that :s_0\ldots s_i = \frac\frac\cdots\frac = \ell_. This sum collapses to: :\sum_^\omega \frac = 1, which is the desired result.


Analysis of expression

From the above analysis we see that the Euler–Lotka equation is in fact the characteristic polynomial of the Leslie matrix. We can analyze its solutions to find information about the eigenvalues of the Leslie matrix (which has implications for the stability of populations). Considering the continuous expression ''f'' as a function of ''r'', we can examine its roots. We notice that at negative infinity the function grows to positive infinity and at positive infinity the function approaches 0. The first
derivative In mathematics, the derivative of a function of a real variable measures the sensitivity to change of the function value (output value) with respect to a change in its argument (input value). Derivatives are a fundamental tool of calculus. ...
is clearly −''af'' and the second derivative is ''a''2''f''. This function is then decreasing, concave up and takes on all positive values. It is also continuous by construction so by the intermediate value theorem, it crosses ''r'' = 1 exactly once. Therefore, there is exactly one real solution, which is therefore the dominant eigenvalue of the matrix the equilibrium growth rate. This same derivation applies to the discrete case.


Relationship to replacement rate of populations

If we let ''λ'' = 1 the discrete formula becomes the
replacement rate The total fertility rate (TFR) of a population is the average number of children that would be born to a woman over her lifetime if: # she were to experience the exact current age-specific fertility rates (ASFRs) through her lifetime # she were t ...
of the population.


Further reading

* * * * {{DEFAULTSORT:Euler-Lotka Equation Demography Leonhard Euler