784 research outputs found
Existence of Gaussian cubature formulas
We provide a necessary and sufficient condition for existence of Gaussian
cubature formulas. It consists of checking whether some overdetermined linear
system has a solution and so complements Mysovskikh's theorem which requires
computing common zeros of orthonormal polynomials. Moreover, the size of the
linear system shows that existence of a cubature formula imposes severe
restrictions on the associated linear functional. For fixed precision (or
degree), the larger the number of variables the worse it gets. And for fixed
number of variables, the larger the precision the worse it gets. Finally, we
also provide an interpretation of the necessary and sufficient condition in
terms of existence of a polynomial with very specific properties
Bounding the support of a measure from its marginal moments
Given all moments of the marginals of a measure on Rn, one provides (a)
explicit bounds on its support and (b), a numerical scheme to compute the
smallest box that contains the support. It consists of solving a hierarchy of
generalized eigenvalue problems associated with some Hankel matrices.Comment: To appear in Proc. Amer. Math. So
Recovering an homogeneous polynomial from moments of its level set
Let be the compact sub-level set of some homogeneous
polynomial . Assume that the only knowledge about is the degree of
as well as the moments of the Lebesgue measure on up to order 2d. Then the
vector of coefficients of is solution of a simple linear system whose
associated matrix is nonsingular. In other words, the moments up to order 2d of
the Lebesgue measure on encode all information on the homogeneous
polynomial that defines (in fact, only moments of order and 2d are
needed)
A new look at nonnegativity on closed sets and polynomial optimization
We first show that a continuous function f is nonnegative on a closed set
if and only if (countably many) moment matrices of some signed
measure with support equal to K, are all positive semidefinite
(if is compact is an arbitrary finite Borel measure with support
equal to K. In particular, we obtain a convergent explicit hierarchy of
semidefinite (outer) approximations with {\it no} lifting, of the cone of
nonnegative polynomials of degree at most . Wen used in polynomial
optimization on certain simple closed sets \K (like e.g., the whole space
, the positive orthant, a box, a simplex, or the vertices of the
hypercube), it provides a nonincreasing sequence of upper bounds which
converges to the global minimum by solving a hierarchy of semidefinite programs
with only one variable. This convergent sequence of upper bounds complements
the convergent sequence of lower bounds obtained by solving a hierarchy of
semidefinite relaxations
Level sets and non Gaussian integrals of positively homogeneous functions
We investigate various properties of the sublevel set
and the integration of on this sublevel set when and are positively
homogeneous functions. For instance, the latter integral reduces to integrating
on the whole space (a non Gaussian integral) and when is
a polynomial, then the volume of the sublevel set is a convex function of the
coefficients of . In fact, whenever is nonnegative, the functional is a convex function of for a large class of functions
. We also provide a numerical approximation scheme to compute
the volume or integrate (or, equivalently to approximate the associated non
Gaussian integral). We also show that finding the sublevel set of minimum volume that contains some given subset is a
(hard) convex optimization problem for which we also propose two convergent
numerical schemes. Finally, we provide a Gaussian-like property of non Gaussian
integrals for homogeneous polynomials that are sums of squares and critical
points of a specific function
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