AbstractWe consider the problem of constructing an optimal set of orthogonal vectors from a given set of vectors in a real Hilbert space. The vectors are chosen to minimize the sum of the squared norms of the errors between the constructed vectors and the given vectors. We show that the design of the optimal vectors, referred to as the least-squares (LS) orthogonal vectors, can be formulated as a semidefinite programming (SDP) problem. Using the many well-known algorithms for solving SDPs, which are guaranteed to converge to the global optimum, the LS vectors can be computed very efficiently in polynomial time within any desired accuracy.By exploiting the connection between our problem and a quantum detection problem we derive a closed form...
Recently, a lot of attention has been devoted to finding physically realisable operations that reali...
Alternating minimization heuristics seek to solve a (difficult) global optimization task through ite...
International audienceDimitri Grigoriev has shown that for any family of $N$ vectors in the $d$-dime...
AbstractWe consider the problem of constructing an optimal set of orthogonal vectors from a given se...
We consider the problem of designing an optimal quantum detector to minimize the probability of a de...
Neste trabalho, apresentamos um novo algoritmo para realizar a discriminação ótima de N estados quâ...
This article deals with the quantum optimal discrimination among mixed quantum states enjoying geome...
It is shown that the Löwdin orthogonalization gives the unique minimum for the functional ϕ measurin...
AbstractWe develop methods that construct an optimal set of vectors with a specified inner product s...
The thesis studies semidefinite programming relaxations for three instances of the general affine ra...
Two transformations are proposed that give orthogonal components with a one-to-one correspondence be...
We describe an algorithm for complex discrete least squares approximation, which turns out to be ver...
Semidefinite programs (SDPs) are convex optimization programs with vast applications in control theo...
Brandao and Svore recently gave quantum algorithms for approximately solving semidefinite programs, ...
B-444 Solving polynomial least squares problems via semidefinite program-ming relaxations Sunyoung K...
Recently, a lot of attention has been devoted to finding physically realisable operations that reali...
Alternating minimization heuristics seek to solve a (difficult) global optimization task through ite...
International audienceDimitri Grigoriev has shown that for any family of $N$ vectors in the $d$-dime...
AbstractWe consider the problem of constructing an optimal set of orthogonal vectors from a given se...
We consider the problem of designing an optimal quantum detector to minimize the probability of a de...
Neste trabalho, apresentamos um novo algoritmo para realizar a discriminação ótima de N estados quâ...
This article deals with the quantum optimal discrimination among mixed quantum states enjoying geome...
It is shown that the Löwdin orthogonalization gives the unique minimum for the functional ϕ measurin...
AbstractWe develop methods that construct an optimal set of vectors with a specified inner product s...
The thesis studies semidefinite programming relaxations for three instances of the general affine ra...
Two transformations are proposed that give orthogonal components with a one-to-one correspondence be...
We describe an algorithm for complex discrete least squares approximation, which turns out to be ver...
Semidefinite programs (SDPs) are convex optimization programs with vast applications in control theo...
Brandao and Svore recently gave quantum algorithms for approximately solving semidefinite programs, ...
B-444 Solving polynomial least squares problems via semidefinite program-ming relaxations Sunyoung K...
Recently, a lot of attention has been devoted to finding physically realisable operations that reali...
Alternating minimization heuristics seek to solve a (difficult) global optimization task through ite...
International audienceDimitri Grigoriev has shown that for any family of $N$ vectors in the $d$-dime...