orthogonalization उदाहरण वाक्य
उदाहरण वाक्य
- When performing orthogonalization on a computer, the Householder transformation is usually preferred over the Gram Schmidt process since it is more numerically stable, i . e . rounding errors tend to have less serious effects.
- Orthogonalization is also possible with respect to any symmetric bilinear form ( not necessarily an inner product, not necessarily over real numbers ), but standard algorithms may encounter division by zero in this more general setting.
- For the definition of a vector space and some further properties I will refer to the article Linear Algebra and Gram-Schmidt Orthogonalization or any textbook in linear algebra and mention only the most important facts for understanding the model.
- It is assured that all the vectors in the Gram Schmidt orthogonalization are of length at least 1, and that \ lambda ( L ( B ) ) \ leq \ zeta ( n ) and that 1 \ leq d \ leq \ zeta ( n ) / \ gamma ( n ) where n is the dimension.
- An important aspect, with respect to which the following methods differ is whether the orthogonalization of the basis functionals is to be performed over the idealized specification of the input signal ( e . g . gaussian, white noise ) or over the actual realization of the input ( i . e . the pseudo-random, bounded, almost-white version of gaussian white noise, or any other stimulus ).