Paul J. Steinhardt, P. Chaudhari
Journal of Computational Physics
Fletcher & Powell (1974, Math. Comput., 28, 1067-1087) proposed a numerically stable method for updating the LDLT factorization of a symmetric positive-definite matrix when a symmetric low-rank term is added to it. In Goldfarb & Scheinberg (2004, Math. Program., 99, 1-34) we proposed a product-form version of the method of Fletcher and Powell for use in interior point methods for linear programming and studied its numerical stability. In this paper we extend these results to convex quadratic programming where the Hessian matrix of the objective function is, or can be approximated by, a diagonal matrix plus a matrix of low rank. Our new results are based on showing that the elements of the unit lower triangular matrix in the LDLT factorizations that arise in this context are uniformly bounded as the duality gap is driven to zero. Practicable versions of our approach are described for structured quadratic programs that arise in support vector machines and portfolio optimization.
Paul J. Steinhardt, P. Chaudhari
Journal of Computational Physics
Salvatore Certo, Anh Pham, et al.
Quantum Machine Intelligence
Jaione Tirapu Azpiroz, Alan E. Rosenbluth, et al.
SPIE Photomask Technology + EUV Lithography 2009
Kafai Lai, Alan E. Rosenbluth, et al.
SPIE Advanced Lithography 2007