I'm trying to understand how $[Q,P] \neq 0$ leads to the conclusion that no probability distribution can be established for $A$ and $B$.
Classically if we had two random variables $Q$ and $P$ we could write
\begin{align} \phi_{Q,P}(t_q,t_p) =& E\left[e^{i(t_Q Q + t_P P)}\right]\\ =& \int e^{i(t_Q q + t_P p)} f_{Q,P}(q,p)dq dp\\ =& \mathcal{FT}\left[f_{Q,P}(q,p)\right](t_q, t_p) \end{align}
Here $\phi_{Q,P}$ is the characteristic function and $f_{Q, P}$ is the probability density function for $Q$ and $P$. In particular we have that
\begin{align} f_{Q,P}(q,p) = \mathcal{FT}^{-1}\left[\phi_{Q,P}(t_Q,t_P)\right](q, p) \end{align}
If expectation values like $E\left[ Q^n P^m \right]$ are known for all non-negative integers $n, m$ then $\phi_{Q,P}(t_Q, t_P)$ can in principle be calculated and then Fourier transformed to find $f_{Q,P}(q, p)$. That is, knowledge of expectation values is enough to determine a probability function.
Quantum mechanically it is known that this procedure breaks down. There is no way to come up with a probability distribution function for non-commuting observables. My question is where my argument above breaks down in the non-commuting case. Quantum mechanically (at least theoretically) we have access to expectation values of the form $E\left[Q^n P^m\right]$ (and versions of the same with different operator orderings). This means that we can calculated some sort of quantum characteristic function $\phi_{Q, P}(t_Q, t_P)$ for $Q$ and $P$. In principle we should then be able to Fourier transform this characteristic function to get something like a probability distribution for $Q$ and $P$. For some reason, we only get a quasiprobability distribution and not a normal probability distribution. Why not?
I don't know the full answer to this but I have a couple of leads that I will mention.
- First, as I mentioned above, $E[QP] \neq E[PQ]$ and $E[Q^nP^m] \neq E[Q^{n-1}P^{m}Q]$ and the like. This means that there is not a unique definition for the characteristic function. Given that there is not a unique characteristic function it makes sense there is not a unique probability distrubition. The different choices of characteristic function can be related to different quasiprobaiblity distribution such as the Wigner, P, or Q distributions. My question is why is it the case that NONE of these characteristic functions could ever lead to a valid probability distribution function.
- Not just any function $\phi$ can be transformed to give a probability distribution function. Probability distribution functions are normalized and always positive. It is possible to take a Fourier transform and get something which is not normalized and which is not always positive. I believe this is related to Bochner's theorem but I'm having trouble parsing the theorem because of all of the measure theory stuff. I would really appreciate an answer that explains how we can look at a classical characteristic function and see certain properties that allow us to know it will Fourier transform to a nice probability distribution function and then how we can clearly see that non-commuting operator characteristic function do not satisfy these properties so we know they won't give us nice probability distribution functions.