The Classical Moment Problem And Some Related Questions In Analysis -

For the Hamburger problem, this condition is also sufficient (a theorem of Hamburger, 1920): A sequence $(m_n)$ is a Hamburger moment sequence if and only if the Hankel matrix is positive semidefinite.

For the Hausdorff problem (support in $[0,1]$), the condition becomes that the sequence is : the forward differences alternate in sign. Specifically, $\Delta^k m_n \ge 0$ for all $n,k\ge 0$, where $\Delta m_n = m_n+1 - m_n$. 3. Uniqueness: The Problem of Determinacy Even if a moment sequence exists, the measure might not be unique. This is the most subtle part of the theory.

$$ \sum_i,j=0^N a_i a_j m_i+j \ge 0 $$

$$ x P_n(x) = P_n+1(x) + a_n P_n(x) + b_n P_n-1(x) $$

$$ m_n = \int_\mathbbR x^n , d\mu(x) $$

Imagine you are given a mysterious black box. You cannot see inside it, but you are allowed to ask for specific "moments." You ask: "What is the average position?" The box replies: $m_1 = 0$. You ask: "What is the average squared position?" It replies: $m_2 = 1$. You continue: $m_3 = 0$, $m_4 = 3$, and so on.

encodes all the moments. The measure is determinate iff the associated (a tridiagonal matrix) is essentially self-adjoint in $\ell^2$. Indeterminacy corresponds to a deficiency of self-adjoint extensions—a concept from quantum mechanics. Complex Analysis and the Stieltjes Transform Define the Stieltjes transform of $\mu$: For the Hamburger problem, this condition is also

for all finite sequences $(a_0,\dots,a_N)$. This means the infinite $H = (m_i+j)_i,j=0^\infty$ must be positive semidefinite (all its finite leading principal minors are $\ge 0$).

For the Stieltjes problem (support on $[0,\infty)$), we need an extra condition: both the Hankel matrix of $(m_n)$ and the shifted Hankel matrix of $(m_n+1)$ must be positive semidefinite. $$ \sum_i,j=0^N a_i a_j m_i+j \ge 0 $$

At first glance, this seems like a straightforward problem of "matching moments." But as we will see, it opens a Pandora's box of deep analysis, touching functional analysis, orthogonal polynomials, complex analysis, and even quantum mechanics. In probability and analysis, a moment is a generalization of the idea of "average power." For a real random variable $X$ with distribution $\mu$ (a positive measure on $\mathbbR$), the $n$-th moment is: