Abstract. Two corrector-predictor interior point algorithms are proposed for solving monotone linear complementarity problems. The algorithms produce a sequence of iterates in the Nneighborhood of the central path. The first algorithm uses line search schemes requiring the solution of higher order polynomial equations in one variable, while the line search procedures of the second algorithm can be implemented in O(m n1+) arithmetic operations, where n is the dimension of the problems, (0, 1] is a constant, and m is the maximum order of the predictor and the corrector. If m = (log n) then both algorithms have O( nL) iteration complexity. They are superlinearly convergent even for degenerate problems. Key words. linear complementarity problem, interior-point algorithm, large neighbourhood, superlinear convergence
Florian A. Potra