Computational complexity of linear large margin classification with ramp loss

Søren Frejstrup Maibing, Christian Igel

2 Citations (Scopus)

Abstract

Minimizing the binary classification error with a linear model leads to an NP-hard problem. In practice, surrogate loss functions are used, in particular loss functions leading to large margin classification such as the hinge loss and the ramp loss. The intuitive large margin concept is theoretically supported by generalization bounds linking the expected classification error to the empirical margin error and the complexity of the considered hypotheses class. This article addresses the fundamental question about the computational complexity of determining whether there is a hypotheses class with a hypothesis such that the upper bound on the generalization error is below a certain value. Results of this type are important for model comparison and selection. This paper takes a first step and proves that minimizing a basic margin-bound is NP-hard when considering linear hypotheses and the p-margin loss function, which generalizes the ramp loss. This result directly implies the hardness of ramp loss minimization.

Original languageEnglish
Title of host publicationProceedings of the 18th International Conference on Artificial Intelligence and Statistics (AISTATS) 2015
EditorsGuy Lebanon, S. V. N. Vishwanathan
Number of pages9
Publication date2015
Pages259-267
Publication statusPublished - 2015
EventInternational Conference on Artificial Intelligence and Statistics 2015 - San Diego, Cal., United States
Duration: 9 May 201512 May 2015
Conference number: 18

Conference

ConferenceInternational Conference on Artificial Intelligence and Statistics 2015
Number18
Country/TerritoryUnited States
CitySan Diego, Cal.
Period09/05/201512/05/2015
SeriesJMLR: Workshop and Conference Proceedings
Volume38

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