17,352 research outputs found

    Convexity Conditions of Kantorovich Function and Related Semi-infinite Linear Matrix Inequalities

    Full text link
    The Kantorovich function (xTAx)(xTAβˆ’1x)(x^TAx)(x^T A^{-1} x), where AA is a positive definite matrix, is not convex in general. From matrix/convex analysis point of view, it is interesting to address the question: When is this function convex? In this paper, we investigate the convexity of this function by the condition number of its matrix. In 2-dimensional space, we prove that the Kantorovich function is convex if and only if the condition number of its matrix is bounded above by 3+22,3+2\sqrt{2}, and thus the convexity of the function with two variables can be completely characterized by the condition number. The upper bound `3+223+2\sqrt{2} ' is turned out to be a necessary condition for the convexity of Kantorovich functions in any finite-dimensional spaces. We also point out that when the condition number of the matrix (which can be any dimensional) is less than or equal to 5+26,\sqrt{5+2\sqrt{6}}, the Kantorovich function is convex. Furthermore, we prove that this general sufficient convexity condition can be remarkably improved in 3-dimensional space. Our analysis shows that the convexity of the function is closely related to some modern optimization topics such as the semi-infinite linear matrix inequality or 'robust positive semi-definiteness' of symmetric matrices. In fact, our main result for 3-dimensional cases has been proved by finding an explicit solution range to some semi-infinite linear matrix inequalities.Comment: 24 page
    • …
    corecore