3
$\begingroup$

Bayes' rule appears to bevery simple at first sight, but when studied deeply I find it is difficult and confusing, especially in MCMC applications when multiple parameters need to be estimated.

For example, assuming $x,y,z,t$ are four parameters, which of the following three expressions are true (or true under some specifications)?

  1. $P(x)P(z\mid x,y)=P(x,z\mid y)$
  2. $P(x\mid y)P(z\mid x,y)=P(x,z\mid y)$
  3. $P(x\mid y)P(z\mid x,t)=P(x,z\mid y,t)$

I usually see formulas similar with 3, but I wonder why it hold. Could someone explain it in detail?

If there are any excellent books that could help me, pls list them.

1 Answers 1

5

The generalization of the formula $$\Pr(A \cap B) = \Pr(A \mid B)\Pr(B)$$ for a conditional probability $\Pr(\cdot \mid C)$ is the following one: $$\Pr(A \cap B \mid C) = \Pr(A \mid B\cap C)\Pr(B \mid C).$$

Your formula number 2 is analogous to the above formula (with $P(\cdot \mid y)$ substituted for $\Pr(\cdot \mid C)$), and it is the correct one.

But note that this is not Bayes' rule.

  • 0
    +1 A great answer that needs no editing @StephaneLaurent2012-09-23
  • 1
    I think you mean the No.2 formula is correct.\\Could you continue commenting on No.3 formula as I have questioned?2012-09-23
  • 0
    @jerry Yes, sorry and thanks, I meant number 2 (so I've done the correction in my answer). Formula 3 is generally wrong, could you show us the similar formula you have seen somewhere ? Maybe there were other assumptions.2012-09-23
  • 0
    Sorry for my late reply. I paste an example with the similar formula in this thread 2012-10-12