An Exponential Lower Bound on the Complexity of Regularization Paths
Journal of Computational Geometry (JoCG), 2009
Abstract
For a variety of regularization methods, algorithms computing the entire solution path have been developed recently. Solution path algorithms do not only compute the solution for one particular value of the regularization parameter but the entire path of solutions, making the selection of an optimal parameter much easier. It has been assumed that these piecewise linear solution paths have only linear complexity, i.e. linearly many bends. We prove that for the support vector machine this complexity can indeed be exponential in the number of training points in the worst case.
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