Price 3.0
From Evolution and Games
(→A B mutant in a population of A's) |
(→A B mutant in a population of A's) |
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This is pretty well defined, so we can also compute the covariance of these two actual random variables. Let us start with the expectations... | This is pretty well defined, so we can also compute the covariance of these two actual random variables. Let us start with the expectations... | ||
+ | <math>\mathbb{E}\left[ X\right] =\frac{N-1}{N}</math> | ||
+ | |||
+ | <toggledisplay> | ||
+ | <math>\mathbb{E}\left[ X\right] =\sum_{x=0,1}x\mathbb{P}\left( X=x\right) = </math> | ||
+ | |||
+ | <math>=\mathbb{P}\left( X=1\right) = \frac{N-1}{N}</math> | ||
+ | </toggledisplay> | ||
+ | |||
+ | |||
+ | For symmetry reasons... | ||
+ | |||
+ | <math>\mathbb{E}\left[ Y\right] =1 </math> | ||
+ | |||
+ | |||
+ | <math>\mathbb{E}\left[ XY\right] = \frac{\left( N-2\right) \alpha +\left( N-1\right) \beta }{\left(N-2\right) \alpha +N\beta }</math> | ||
+ | |||
+ | <toggledisplay> | ||
+ | |||
+ | <math>\mathbb{E}\left[ XY\right] =\sum_{x=0,1}\sum_{y=0}^{N}xy\mathbb{P}\left(X=x,Y=y\right) \text{ (because }xy=0\text{ if either }x=0\text{ or }y=0\text{)} </math> | ||
+ | |||
+ | <math>=\sum_{y=0}^{N}y\mathbb{P}\left( X=1,Y=y\right) = </math> | ||
+ | |||
+ | <math>=\sum_{k=0}^{N}y\mathbb{P}\left( X=1\right) \mathbb{P}\left(Y=k|X=1\right) = </math> | ||
+ | |||
+ | <math>=\frac{N-1}{N}\sum_{k=0}^{N}\left[ \frac{1}{N-1}k\binom{N}{k}\left(p_{1,0,N-1}\right) ^{k}\left( 1-p_{1,0,N-1}\right) ^{N-k}+\frac{N-2}{N-1}k\binom{N}{k}\left( p_{1,1,N-1}\right) ^{k}\left( 1-p_{1,1,N-1}\right) ^{N-k}\right] </math> | ||
+ | |||
+ | <math>=p_{1,0,N-1}+\left( N-2\right) p_{1,1,N-1} </math> | ||
+ | |||
+ | <math>=\frac{\beta }{\left( N-2\right) \alpha +N\beta }+\left( N-2\right) \frac{\alpha +\beta }{\left( N-2\right) \alpha +N\beta }= </math> | ||
+ | |||
+ | <math>=\frac{\left( N-2\right) \alpha +\left( N-1\right) \beta }{\left(N-2\right) \alpha +N\beta }</math> | ||
+ | </toggledisplay> | ||
+ | |||
+ | Thus.... | ||
+ | |||
+ | <math>Cov\left( X,Y\right) =\mathbb{E}\left[ XY\right] -\mathbb{E}\left[ X\right] \mathbb{E}\left[ Y\right] =\frac{\left( N-2\right) \alpha +\left( N-1\right)\beta }{\left( N-2\right) \alpha +N\beta }-\frac{N-1}{N} </math> |
Revision as of 22:11, 18 September 2010
A model with frequency dependence
We go back to the asexual model, but now we will take a model with frequency dependence. This will be a bit more complicated, but we can still use a basic, well known model. Suppose there are $N$ individuals. They are paired randomly, and play a game in those pairs. The game gives them payoffs according to the following payoff matrix
If qi = 1, then that means that individual $i$ plays strategy A, and qi = 0 means that individual i plays strategy B. Depending on the match, each individual gets a payoff πi. The next generation is drawn, as before, one individual at a time. But now the probability that i is drawn as a parent depends on the payoff, and not just on the own genotype.
We do the same procedure as before, but with a few different starting points.
An A mutant in a population of B's
Suppose q1 = 1 and qi = 0 for i = 2,...,N. The probability of any individual i = 2,...,N to be matched with individual 1 is 1 / (N − 1).
The probability with which an individual i with qi = 1, who is matched to an individual j with qj = 0, is chosen is:
The probability with which an individual i with qi = 0, who is matched to an individual j with qj = 0, is chosen is:
The probability with which an individual i with qi = 0, who is matched to an individual j with qj = 1, is chosen is:
We can also compute the covariance of these two actual random variables. Let us start by computing expectations...
For symmetry reasons...
[show details]
The Covariance is thus...
A B mutant in a population of A's
Suppose q1 = 0 and qi = 1 for i = 2,...,N. The probability of any individual i = 2,...,N to be matched with individual 1 is 1 / (N − 1).
The probability with which an individual i with qi = 0, who is matched to an individual j with qj = 1...
The probability with which an individual i with qi = 1, who is matched to an individual j with qj = 1...
The probability with which an individual i with qi = 1, who is matched to an individual j with qj = 0...
So...
This is pretty well defined, so we can also compute the covariance of these two actual random variables. Let us start with the expectations...
For symmetry reasons...
Thus....