Efficient numerical algorithms for regularized regression problem with applications to traffic matrix estimations
In this work we collect and compare to each other many different numerical methods for regularized regression problem and for the problem of projection on a hyperplane. Such problems arise, for example, as a subproblem of demand matrix estimation in IP- networks. In this special case matrix of affin...
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Zusammenfassung: | In this work we collect and compare to each other many different numerical
methods for regularized regression problem and for the problem of projection on
a hyperplane. Such problems arise, for example, as a subproblem of demand
matrix estimation in IP- networks. In this special case matrix of affine
constraints has special structure: all elements are 0 or 1 and this matrix is
sparse enough. We have to deal with huge-scale convex optimization problem of
special type. Using the properties of the problem we try "to look inside the
black-box" and to see how the best modern methods work being applied to this
problem. |
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DOI: | 10.48550/arxiv.1508.00858 |