singular behavior - определение. Что такое singular behavior
Diclib.com
Словарь онлайн

Что (кто) такое singular behavior - определение

IN MATHEMATICS, THE SQUARE ROOT OF AN EIGENVALUE OF A NONNEGATIVE SELF-ADJOINT OPERATOR
Singular values; Singular Values
  • semi-axes]] of the ellipse.

Dog behavior         
  • NASA astronaut [[Leland D. Melvin]] with his dogs Jake and Scout
INTERNALLY COORDINATED RESPONSES OF INDIVIDUALS OR GROUPS OF DOMESTIC DOGS TO INTERNAL AND EXTERNAL STIMULI
Dog society; Dog behaviour; Behavior of dogs; Sexual behavior of dogs; Social behavior of dogs; Reproductive behavior of dogs; Canine behavior; Canine sexual behavior; Canine reproductive behavior
Dog behavior is the internally coordinated responses of individuals or groups of domestic dogs to internal and external stimuli. It has been shaped by millennia of contact with humans and their lifestyles.
Singularly         
WIKIMEDIA DISAMBIGUATION PAGE
Sing.; Singular (disambiguation); Singularly
·adv Strangely; oddly; as, to behave singularly.
II. Singularly ·adv So as to express one, or the singular number.
III. Singularly ·adv In a singular manner; in a manner, or to a degree, not common to others; extraordinarily; as, to be singularly exact in one's statements; singularly considerate of others.
singular         
WIKIMEDIA DISAMBIGUATION PAGE
Sing.; Singular (disambiguation); Singularly
a.
1.
Single, individual.
2.
Single, uncompounded, not complex.
3.
Unusual, uncommon, rare, unwonted, strange, extraordinary, remarkable, peculiar.
4.
Particular, peculiar, exceptional, unexampled, unparalleled, remarkable, unprecedented, unaccountable, strange.
5.
Remarkable, eminent, unusual, rare, extraordinary, exceptional.
6.
Unique.
7.
Peculiar, odd, eccentric, queer, fantastic, bizarre.

Википедия

Singular value

In mathematics, in particular functional analysis, the singular values, or s-numbers of a compact operator T : X Y {\displaystyle T:X\rightarrow Y} acting between Hilbert spaces X {\displaystyle X} and Y {\displaystyle Y} , are the square roots of the (necessarily non-negative) eigenvalues of the self-adjoint operator T T {\displaystyle T^{*}T} (where T {\displaystyle T^{*}} denotes the adjoint of T {\displaystyle T} ).

The singular values are non-negative real numbers, usually listed in decreasing order (σ1(T), σ2(T), …). The largest singular value σ1(T) is equal to the operator norm of T (see Min-max theorem).

If T acts on Euclidean space R n {\displaystyle \mathbb {R} ^{n}} , there is a simple geometric interpretation for the singular values: Consider the image by T {\displaystyle T} of the unit sphere; this is an ellipsoid, and the lengths of its semi-axes are the singular values of T {\displaystyle T} (the figure provides an example in R 2 {\displaystyle \mathbb {R} ^{2}} ).

The singular values are the absolute values of the eigenvalues of a normal matrix A, because the spectral theorem can be applied to obtain unitary diagonalization of A {\displaystyle A} as A = U Λ U {\displaystyle A=U\Lambda U^{*}} . Therefore, A A = U Λ Λ U = U | Λ | U {\textstyle {\sqrt {A^{*}A}}={\sqrt {U\Lambda ^{*}\Lambda U^{*}}}=U\left|\Lambda \right|U^{*}} .

Most norms on Hilbert space operators studied are defined using s-numbers. For example, the Ky Fan-k-norm is the sum of first k singular values, the trace norm is the sum of all singular values, and the Schatten norm is the pth root of the sum of the pth powers of the singular values. Note that each norm is defined only on a special class of operators, hence s-numbers are useful in classifying different operators.

In the finite-dimensional case, a matrix can always be decomposed in the form U Σ V {\displaystyle \mathbf {U\Sigma V^{*}} } , where U {\displaystyle \mathbf {U} } and V {\displaystyle \mathbf {V^{*}} } are unitary matrices and Σ {\displaystyle \mathbf {\Sigma } } is a rectangular diagonal matrix with the singular values lying on the diagonal. This is the singular value decomposition.