Hough transform

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In probability theory, a conditional expectation (also known as conditional expected value or conditional mean) is the expected value of a real random variable with respect to a conditional probability distribution.

The concept of conditional expectation is extremely important in Kolmogorov's measure-theoretic definition of probability theory. In fact, the concept of conditional probability itself is actually defined in terms of conditional expectation.

Introduction

Let X and Y be discrete random variables, then the conditional expectation of X given the event Y=y is a function of y over the range of Y

E(X|Y=y)=x𝒳xP(X=x|Y=y)=x𝒳xP(X=x,Y=y)P(Y=y),

where 𝒳 is the range of X.

If now X is a continuous random variable, while Y remains a discrete variable, the conditional expectation is:

E(X|Y=y)=𝒳xfX(x|Y=y)dx

where fX(|Y=y) is the conditional density of X given Y=y.

A problem arises when Y is continuous. In this case, the probability P(Y=y) = 0, and the Borel–Kolmogorov paradox demonstrates the ambiguity of attempting to define conditional probability along these lines.

However the above expression may be rearranged:

E(X|Y=y)P(Y=y)=x𝒳xP(X=x,Y=y),

and although this is trivial for individual values of y (since both sides are zero), it should hold for any measurable subset B of the domain of Y that:

BE(X|Y=y)P(Y=y)dy=Bx𝒳xP(X=x,Y=y)dy.

In fact, this is a sufficient condition to define both conditional expectation and conditional probability.

Formal definition

Let (Ω,,P) be a probability space, with a random variable X:Ωn and a sub-σ-algebra .

Then a conditional expectation of X given (denoted as E[X|]) is any -measurable function (Ωn) which satisfies:

HE[X|](ω)dP(ω)=HX(ω)dP(ω)for eachH.[1]

Note that E[X|] is simply the name of the conditional expectation function.

Discussion

A couple of points worth noting about the definition:

  • This is not a constructive definition; we are merely given the required property that a conditional expectation must satisfy.
    • The required property has the same form as the last expression in the Introduction section.
    • Existence of a conditional expectation function is determined by the Radon–Nikodym theorem, a sufficient condition is that the (unconditional) expected value for X exist.
    • Uniqueness can be shown to be almost sure: that is, versions of the same conditional expectation will only differ on a set of probability zero.
  • The σ-algebra controls the "granularity" of the conditioning. A conditional expectation E[X|] over a finer-grained σ-algebra will allow us to condition on a wider variety of events.
    • To condition freely on values of a random variable Y with state space (𝒴,Σ), it suffices to define the conditional expectation using the pre-image of Σ with respect to Y, so that E[X|Y] is defined to be E[X|], where
=σ(Y):=Y1(Σ):={Y1(S):SΣ}
This suffices to ensure that the conditional expectation is σ(Y)-measurable. Although conditional expectation is defined to condition on events in the underlying probability space Ω, the requirement that it be σ(Y)-measurable allows us to condition on Y as in the introduction.

Definition of conditional probability

For any event A𝒜, define the indicator function:

1A(ω)={1if ωA,0if ωA,

which is a random variable with respect to the Borel σ-algebra on (0,1). Note that the expectation of this random variable is equal to the probability of A itself:

E(1A)=P(A).

Then the conditional probability given is a function P(|):𝒜×Ω(0,1) such that P(A|) is the conditional expectation of the indicator function for A:

P(A|)=E(1A|)

In other words, P(A|) is a -measurable function satisfying

BP(A|)(ω)dP(ω)=P(AB)for allA𝒜,B.

A conditional probability is regular if P(|)(ω) is also a probability measure for all ω ∈ Ω. An expectation of a random variable with respect to a regular conditional probability is equal to its conditional expectation.

See also conditional probability distribution.

Conditioning as factorization

In the definition of conditional expectation that we provided above, the fact that Y is a real random variable is irrelevant: Let U be a measurable space, that is, a set equipped with a σ-algebra Σ of subsets. A U-valued random variable is a function Y:(Ω,𝒜)(U,Σ) such that Y1(B)𝒜 for any measurable subset BΣ of U.

We consider the measure Q on U given as above: Q(B) = P(Y−1(B)) for every measurable subset B of U. Then Q is a probability measure on the measurable space U defined on its σ-algebra of measurable sets.

Theorem. If X is an integrable random variable on Ω then there is one and, up to equivalence a.e. relative to Q, only one integrable function g on U (which is written g=E(XY)) such that for any measurable subset B of U:

Y1(B)X(ω)dP(ω)=Bg(u)dQ(u).

There are a number of ways of proving this; one as suggested above, is to note that the expression on the left hand side defines, as a function of the set B, a countably additive signed measure μ on the measurable subsets of U. Moreover, this measure μ is absolutely continuous relative to Q. Indeed Q(B) = 0 means exactly that Y−1(B) has probability 0. The integral of an integrable function on a set of probability 0 is itself 0. This proves absolute continuity. Then the Radon–Nikodym theorem provides the function g, equal to the density of μ with respect to Q.

The defining condition of conditional expectation then is the equation

Y1(B)X(ω)dP(ω)=BE(XY)(u)dQ(u),

and it holds that

E(XY)Y=E(XY1(Σ)).

We can further interpret this equality by considering the abstract change of variables formula to transport the integral on the right hand side to an integral over Ω:

Y1(B)X(ω)dP(ω)=Y1(B)(E(XY)Y)(ω)dP(ω).

This equation can be interpreted to say that the following diagram is commutative in the average.


                  E(X|Y)= goY
Ω  ───────────────────────────> R
          Y                        g=E(X|Y= ·)
Ω  ──────────>   R    ───────────> R
  
ω  ──────────> Y(ω)  ───────────> g(Y(ω)) = E(X|Y=Y(ω))
  
                        y    ───────────> g(  y ) = E(X|Y=  y )

The equation means that the integrals of X and the composition E(XY=)Y over sets of the form Y−1(B), for B a measurable subset of U, are identical.

Conditioning relative to a subalgebra

There is another viewpoint for conditioning involving σ-subalgebras N of the σ-algebra M. This version is a trivial specialization of the preceding: we simply take U to be the space Ω with the σ-algebra N and Y the identity map. We state the result:

Theorem. If X is an integrable real random variable on Ω then there is one and, up to equivalence a.e. relative to P, only one integrable function g such that for any set B belonging to the subalgebra N

BX(ω)dP(ω)=Bg(ω)dP(ω)

where g is measurable with respect to N (a stricter condition than the measurability with respect to M required of X). This form of conditional expectation is usually written: E(X | N). This version is preferred by probabilists. One reason is that on the Hilbert space of square-integrable real random variables (in other words, real random variables with finite second moment) the mapping X → E(X | N) is self-adjoint

E(XE(YN))=E(E(XN)E(YN))=E(E(XN)Y)

and a projection (i.e. idempotent)

LP2(Ω;M)LP2(Ω;N).

Basic properties

Let (Ω, M, P) be a probability space, and let N be a σ-subalgebra of M.

  • Conditioning with respect to N  is linear on the space of integrable real random variables.
f(E(XN))E(fXN).
  • Conditioning is a contractive projection
LPs(Ω;M)LPs(Ω;N), i.e. E|E(XN)|sE|X|s
for any s ≥ 1.

See also

Notes

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References

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