| Title | A space quantization method for numerical integration |
| Publication Type | Journal Article |
| Year of Publication | 1998 |
| Authors | Gilles Pagès |
| Journal | J. Comput. Appl. Math. |
| Volume | 89 |
| Pagination | 1–38 |
| ISSN | 0377-0427 |
| Keywords | competitive algorithms, error estimation, learning algorithms, numerical integration, numerical methods, optimization method, vector quantization, Voronoi diagram |
| Abstract | We propose a new method (SQM) for numerical integration of |
functions (
) defined on a convex subset
of
with respect to a continuous distribution
. It relies on a space quantization of
-tuple
.
is approximated by a weighted sum of the
's. The integration error bound depends on the distortion
of the Voronoï tessellation of
. This notion comes from Information Theoretists. Its main properties (existence of a minimizing
, asymptotics of
as
) are presented for a wide class of measures
,
and the characteristics of its Voronoï tessellation. Some new results on the Competitive Learning Vector Quantization algorithm (when
) are obtained as a by-product. Some tests, simulations and provisional remarks are proposed as a conclusion.