Data di Pubblicazione:
2005
Abstract:
In thiswork, we consider the convex quadratic programming problem arising in support vector machine
(SVM), which is a technique designed to solve a variety of learning and pattern recognition problems.
Since the Hessian matrix is dense and real applications lead to large-scale problems, several decomposition
methods have been proposed, which split the original problem into a sequence of smaller
subproblems.SVMlight algorithm is a commonly used decomposition method for SVM, and its convergence
has been proved only recently under a suitable block-wise convexity assumption on the objective
function. In SVMlight algorithm, the size q of the working set, i.e. the dimension of the subproblem,
can be any even number. In the present paper, we propose a decomposition method on the basis of
a proximal point modification of the subproblem and the basis of a working set selection rule that
includes, as a particular case, the one used by the SVMlight algorithm. We establish the asymptotic
convergence of the method, for any size q >= 2 of the working set, and without requiring any further
block-wise convexity assumption on the objective function. Furthermore, we show that the algorithm
satisfies in a finite number of iterations a stopping criterion based on the violation of the optimality
conditions.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Support vector machines; SVMlight algorithm; Decomposition methods; Proximal point
Elenco autori:
Palagi, Laura; Sciandrone, Marco
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