Difference between revisions of "Orthogonalization"
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b _ {i} = \left | | b _ {i} = \left | | ||
− | \begin{array}{ | + | \begin{array}{cccc} |
− | ( a _ {1} , a _ {1} ) &\ | + | ( a _ {1} , a _ {1} ) &\cdots &( a _ {1} , a _ {i- 1} ) &a _ {1} \\ |
− | \ | + | \vdots &\ddots &\vdots & \vdots \\ |
− | ( a _ {i} , a _ {1} ) &\ | + | ( a _ {i} , a _ {1} ) &\cdots &( a _ {i} , a _ {i- 1} ) &a _ {i} \\ |
\end{array} | \end{array} | ||
\right | | \right | | ||
$$ | $$ | ||
− | + | (The determinant at the right-hand side has to be formally expanded by the last column). The corresponding orthonormal system takes the form | |
− | + | $$ | |
q _ {i} = | q _ {i} = | ||
\frac{b _ {i} }{\sqrt {G _ {i- 1} G _ {i} } } | \frac{b _ {i} }{\sqrt {G _ {i- 1} G _ {i} } } | ||
, | , | ||
$$ | $$ | ||
− | is the [[Gram determinant|Gram determinant]] of the system | + | where $G_i$ is the [[Gram determinant|Gram determinant]] of the system |
− | with ''G''<sub>0</sub>=1 by definition. | + | $ a _ {1}, \dots, a _ {i} $, with ''G''<sub>0</sub>=1 by definition. |
− | |||
− | |||
− | |||
− | |||
This process can also be used for a countable system of vectors. | This process can also be used for a countable system of vectors. |
Latest revision as of 08:33, 13 May 2022
orthogonalization process
An algorithm to construct for a given linear independent system of vectors in a Euclidean or Hermitian space $ V $ an orthogonal system of non-zero vectors generating the same subspace in $ V $. The most well-known is the Schmidt (or Gram–Schmidt) orthogonalization process, in which from a linear independent system $ a _ {1}, \dots, a _ {k} $, an orthogonal system $ b _ {1}, \dots, b _ {k} $ is constructed such that every vector $ b _ {i} $ ($ i = 1, \dots, k $) is linearly expressed in terms of $ a _ {1}, \dots, a _ {i} $, i.e. $ b _ {i} = \sum _ {j= 1} ^ {i} \gamma _ {ij} a _ {j} $, where $ C = \| \gamma _ {ij} \| $ is an upper-triangular matrix. It is possible to construct the system $ \{ b _ {i} \} $ such that it is orthonormal and such that the diagonal entries $ \gamma _ {ii} $ of $ C $ are positive; the system $ \{ b _ {i} \} $ and the matrix $ C $ are defined uniquely by these conditions.
The Gram–Schmidt process is as follows. Put $ b _ {1} = a _ {1} $; if the vectors $ b _ {1}, \dots, b _ {i} $ have already been constructed, then
$$ b _ {i+ 1} = a _ {i+ 1} + \sum _ { j= 1} ^ { i } \alpha _ {j} b _ {j} , $$
where
$$ \alpha _ {j} = - \frac{( a _ {j+ 1} , b _ {j} ) }{( b _ {j} , b _ {j} ) } , $$
$ j = 1, \dots, i $, are obtained from the condition of orthogonality of the vector $ b _ {i+ 1} $ to $ b _ {1}, \dots, b _ {i} $. The geometric sense of this process comprises the fact that at every step, the vector $ b _ {i+ 1} $ is perpendicular to the linear hull of $ a _ {1}, \dots, a _ {i} $ drawn to the end of the vector $ a _ {i+ 1} $. The product of the lengths $ | b _ {1} | \dots | b _ {k} | $ is equal to the volume of the parallelepiped constructed on the vectors of the system $ \{ a _ {i} \} $ as edges. By normalizing the vectors $ b _ {i} $, the required orthonormal system is obtained. An explicit expression of the vectors $ b _ {i} $ in terms of $ a _ {1}, \dots, a _ {k} $ is given by the formula
$$ b _ {i} = \left | \begin{array}{cccc} ( a _ {1} , a _ {1} ) &\cdots &( a _ {1} , a _ {i- 1} ) &a _ {1} \\ \vdots &\ddots &\vdots & \vdots \\ ( a _ {i} , a _ {1} ) &\cdots &( a _ {i} , a _ {i- 1} ) &a _ {i} \\ \end{array} \right | $$ (The determinant at the right-hand side has to be formally expanded by the last column). The corresponding orthonormal system takes the form $$ q _ {i} = \frac{b _ {i} }{\sqrt {G _ {i- 1} G _ {i} } } , $$ where $G_i$ is the Gram determinant of the system $ a _ {1}, \dots, a _ {i} $, with G0=1 by definition.
This process can also be used for a countable system of vectors.
The Gram–Schmidt process can be interpreted as expansion of a non-singular square matrix in the product of an orthogonal (or unitary, in the case of a Hermitian space) and an upper-triangular matrix with positive diagonal entries, this product being a particular example of an Iwasawa decomposition.
References
[1] | F.R. [F.R. Gantmakher] Gantmacher, "The theory of matrices" , 1 , Chelsea, reprint (1977) (Translated from Russian) |
[2] | A.G. Kurosh, "Higher algebra" , MIR (1972) (Translated from Russian) |
Orthogonalization. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Orthogonalization&oldid=52369