Singular Value Decomposition

From Conservapedia
This is the current revision of Singular Value Decomposition as edited by DavidB4-bot (Talk | contribs) at 14:36, July 28, 2016. This URL is a permanent link to this version of this page.

(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to: navigation, search

Singular value decomposition, or SVD, consists of the reduction of a singular matrix into the product of orthogonal and square matrices.

Discovered in the 19th century, this technique has recently discovered applications in signal error-reduction and in watermarking.