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      Towards A Deeper Geometric, Analytic and Algorithmic Understanding of Margins

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          Abstract

          Given a matrix \(A\), a linear feasibility problem (of which linear classification is a special case) aims to find a solution to a primal problem \(w: A^Tw > \textbf{0}\) or a certificate for the dual problem which is a probability distribution \(p: Ap = \textbf{0}\). Inspired by the continued importance of "large-margin classifiers" in machine learning, this paper studies a condition measure of \(A\) called its \textit{margin} that determines the difficulty of both the above problems. To aid geometrical intuition, we first establish new characterizations of the margin in terms of relevant balls, cones and hulls. Our second contribution is analytical, where we present generalizations of Gordan's theorem, and variants of Hoffman's theorems, both using margins. We end by proving some new results on a classical iterative scheme, the Perceptron, whose convergence rates famously depends on the margin. Our results are relevant for a deeper understanding of margin-based learning and proving convergence rates of iterative schemes, apart from providing a unifying perspective on this vast topic.

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          Author and article information

          Journal
          2014-06-20
          2016-01-29
          Article
          10.1080/10556788.2015.1099652
          1406.5311
          98d3859b-8abb-4e31-9b3e-05b62438eefe

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          Optimization Methods and Software, Volume 31, Issue 2, Pages 377-391, 2016
          18 pages, 3 figures
          math.OC cs.AI cs.LG math.NA stat.ML

          Numerical & Computational mathematics,Numerical methods,Machine learning,Artificial intelligence

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