Semi-Definite Programming by Perceptron Learning
Graepel, Thore, Herbrich, Ralf, Kharechko, Andriy, Shawe-taylor, John S.
–Neural Information Processing Systems
We present a modified version of the perceptron learning algorithm (PLA) which solves semidefinite programs (SDPs) in polynomial time. The algorithm is based on the following three observations: (i) Semidefinite programs are linear programs with infinitely many (linear) constraints; (ii) every linear program can be solved by a sequence of constraint satisfaction problems with linear constraints; (iii) in general, the perceptron learning algorithm solves a constraint satisfaction problem with linear constraints in finitely many updates.
Neural Information Processing Systems
Dec-31-2004