An Exponential Lower Bound on the Complexity of Regularization Paths

03/27/2009
by   Bernd Gärtner, et al.
0

For a variety of regularized optimization problems in machine learning, algorithms computing the entire solution path have been developed recently. Most of these methods are quadratic programs that are parameterized by a single parameter, as for example the Support Vector Machine (SVM). 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 be exponential in the number of training points in the worst case. More strongly, we construct a single instance of n input points in d dimensions for an SVM such that at least Θ(2^n/2) = Θ(2^d) many distinct subsets of support vectors occur as the regularization parameter changes.

READ FULL TEXT
research
03/27/2009

A Combinatorial Algorithm to Compute Regularization Paths

For a wide variety of regularization methods, algorithms computing the e...
research
05/30/2020

Solution Path Algorithm for Twin Multi-class Support Vector Machine

The twin support vector machine and its extensions have made great achie...
research
05/01/2012

Complexity Analysis of the Lasso Regularization Path

The regularization path of the Lasso can be shown to be piecewise linear...
research
10/12/2016

Exploring the Entire Regularization Path for the Asymmetric Cost Linear Support Vector Machine

We propose an algorithm for exploring the entire regularization path of ...
research
03/05/2013

An Equivalence between the Lasso and Support Vector Machines

We investigate the relation of two fundamental tools in machine learning...
research
12/19/2012

A complexity analysis of statistical learning algorithms

We apply information-based complexity analysis to support vector machine...
research
08/22/2019

Quadratic Surface Support Vector Machine with L1 Norm Regularization

We propose ℓ_1 norm regularized quadratic surface support vector machine...

Please sign up or login with your details

Forgot password? Click here to reset