Boletim da Sociedade Paranaense de Matemática (Feb 2022)
Complexity analysis of interior point methods for convex quadratic programming based on a parameterized Kernel function
Abstract
The kernel functions play an important role in the amelioration of the computational complexity of algorithms. In this paper, we present a primal-dual interior-point algorithm for solving convex quadratic programming based on a new parametric kernel function. The proposed kernel function is not logarithmic and not self-regular. We analysis a large and small-update versions which are based on a new kernel function. We obtain the best known iteration bound for large-update methods, which improves signicantly the so far obtained complexity results. This result is the rst to reach this goal.