Definition:
- Joint variables but only for continuous’s Distribution of a function of a random variable
- Let X1 and X2 be jointly continuous random variables with Joint probability density function fX1,X2.
- Suppose: Y1=g1(X1,X2), Y2=g2(X1,X2) for some functions g1 and g2 satisfying:
- The equations y1=g1(x1,x2) and y2=g2(x1,x2) can be uniquely solved for x1 and x2 in terms of y1 and y2
- g1 and g2 have continuous partial derivatives at all (x1,x2) and are such that the Jacobian determinant J(x1,x2)=0
- Take the absolute of jacobian
- Then Y1 and Y2 are jointly continous with JPDF, fY1Y2(y1,y2)=fX1,X2(x1,x2)∣J(x1,x2)∣−1
- Replace x1,x2 with y1,y2
- For n>2:
- Y1=g1(X1,...,Xn),...,Yn=gn(X1,...,Xn)
- Conditions:
- gi all have continuous partial derivative and have unique solutions for xi
- Jacobian determinant, J(x1,..,xn)=0
- Then fY1,...,Yn=fX1,...,X2(x1,...,xn)∣J(x1,...,xn)∣−1