Stock&Watson question 202.5

orit

Active Member
Hi David,
I was really struggling to find the formula for:
Cov(G,P)=Cov(G,0.5G+0.5S)=0.5Cov(G,G)+0.5Cov(G,S)
Based on the notes: Cov(G,P)=Var(G)+Var(P)+Cov(G,P)
Var(G) - is the Cov(G,G) but I don't understand the rest of the formula
Can you please explain the rational?

Thanks,
Orit
 

David Harper CFA FRM

David Harper CFA FRM
Subscriber
Hi Orit,

For reference, the full line (http://forum.bionicturtle.com/threads/p1-t2-202-variance-of-sum-of-random-variables.4967/) is
cov(G,P) = cov(G,0.5G+0.5S) = 0.5cov(G,G) + 0.5cov(G,S) = 0.5var(G) + 0.5cov(G,S).

The first step elaborates on the portfolio (P) as consisting of two positions in equal weights P = 0.5G +0.5S
... this gets us into the partially-self-referential concept of a covariance between a position (G) and the portfolio (P) that contains the position G itself.

The second step is a property of covariance that I like to think of as a "distributive" property of covariance, where the full two variable form is given by
cov(ax + by, cw + dv) = ac*cov(x,w) + ad*cov(x,v) + bc*cov(y,w) + bd*cov(y,v) per http://en.wikipedia.org/wiki/Covariance#Properties
note that a, b, c, and d are constants: they "move out" of the covariance; but x,y,w, and v are random-variables

so the application, in this case, is:
  • cov(G, aG+bS) = cov(G,aG) + cov(G,bS); see how it's sort of distributive. The proof is short, but the intuition is almost accessible if you just keep in mind that G and S are random variables
  • since cov(G,aG) = a*cov(G,G) and cov(G,bS) = s*cov(GS), cov(G,aG) + cov(G,bS) = a*cov(G,G) + b*cov(G,S) = a*var(G) + b*cov(G,S); pulling out constants. Note that, unlike wikipedia, I am using capitals for random variables and small letters for constants.
So, to me, there are ~ three key properties that combine:
  1. the random variables are "distributive" (which i sort of think of as: they can't escape fully participating in the covariance)
  2. the constants always come out directly; e.g., cov(aG,aG) = a*a*cov(G,G) = a^2*var(G). This is commonly used: var(aG) = a^2*var(G)
  3. cov(G,G) = var(G) as you already noted; where the var(G) can be thought of as the diagonal in a covariance matrix
I hope that helps,
 
Top