AbstractApproaches to approximate diagonalization of variable-coefficient differential operators using similarity transformations are presented. These diagonalization techniques are inspired by the interpretation of the Uncertainty Principle by Fefferman, known as the SAK Principle, that suggests the location of eigenfunctions of self-adjoint differential operators in phase space. The similarity transformations are constructed using canonical transformations of symbols and anti-differential operators for making lower-order corrections. Numerical results indicate that the symbols of transformed operators can be made to closely resemble those of constant-coefficient operators, and that approximate eigenfunctions can readily be obtained
A new technique for approximating eigenvalues and eigenvectors of a self-adjoint operator is present...
Methods for transforming partial differential equations into forms more suitable for analysis and so...
AbstractChange of independent variablet=1/xmotivates variable step size discretizations of even orde...
Approaches to approximate diagonalization of variable-coefficient differential operators using simil...
AbstractApproaches to approximate diagonalization of variable-coefficient differential operators usi...
A new method of finding the eigenvalues and eigenvectors of an arbitrary complex matrix is presented...
The complete spectral analysis for some classes of operators has been held in the paper as well as e...
An algorithm to reduce a symmetric matrix to a similar semiseparable one of semiseparability rank 1,...
It is well known how any symmetric matrix can be reduced by an orthogonal similarity transformation...
A new theory is presented, in which a generalized kinematic similarity transformation is used to dia...
A formal solution to a linear matrix differential equation with irregular singularity t1-rY′(t)=A(t)...
The so called augmented statistics of complex random variables has established that both the covaria...
Abstract—The so called “augmented ” statistics of complex random vari-ables has established that bot...
A formal solution to a linear matrix differential equation with irregular singularity t(1-r)Y\u27(t)...
Consider an elliptic self-adjoint pseudodifferential operator A acting on m-columns of half-densitie...
A new technique for approximating eigenvalues and eigenvectors of a self-adjoint operator is present...
Methods for transforming partial differential equations into forms more suitable for analysis and so...
AbstractChange of independent variablet=1/xmotivates variable step size discretizations of even orde...
Approaches to approximate diagonalization of variable-coefficient differential operators using simil...
AbstractApproaches to approximate diagonalization of variable-coefficient differential operators usi...
A new method of finding the eigenvalues and eigenvectors of an arbitrary complex matrix is presented...
The complete spectral analysis for some classes of operators has been held in the paper as well as e...
An algorithm to reduce a symmetric matrix to a similar semiseparable one of semiseparability rank 1,...
It is well known how any symmetric matrix can be reduced by an orthogonal similarity transformation...
A new theory is presented, in which a generalized kinematic similarity transformation is used to dia...
A formal solution to a linear matrix differential equation with irregular singularity t1-rY′(t)=A(t)...
The so called augmented statistics of complex random variables has established that both the covaria...
Abstract—The so called “augmented ” statistics of complex random vari-ables has established that bot...
A formal solution to a linear matrix differential equation with irregular singularity t(1-r)Y\u27(t)...
Consider an elliptic self-adjoint pseudodifferential operator A acting on m-columns of half-densitie...
A new technique for approximating eigenvalues and eigenvectors of a self-adjoint operator is present...
Methods for transforming partial differential equations into forms more suitable for analysis and so...
AbstractChange of independent variablet=1/xmotivates variable step size discretizations of even orde...