Tropical support vector machines: Evaluations and extension to function spaces.

Journal: Neural networks : the official journal of the International Neural Network Society
PMID:

Abstract

Support Vector Machines (SVMs) are one of the most popular supervised learning models to classify using a hyperplane in an Euclidean space. Similar to SVMs, tropical SVMs classify data points using a tropical hyperplane under the tropical metric with the max-plus algebra. In this paper, first we show generalization error bounds of tropical SVMs over the tropical projective torus. While the generalization error bounds attained via Vapnik-Chervonenkis (VC) dimensions in a distribution-free manner still depend on the dimension, we also show numerically and theoretically by extreme value statistics that the tropical SVMs for classifying data points from two Gaussian distributions as well as empirical data sets of different neuron types are fairly robust against the curse of dimensionality. Extreme value statistics also underlie the anomalous scaling behaviors of the tropical distance between random vectors with additional noise dimensions. Finally, we define tropical SVMs over a function space with the tropical metric.

Authors

  • Ruriko Yoshida
    Department of Operations Research, Naval Postgraduate School, Monterey, 93943, CA, USA. Electronic address: ryoshida@nps.edu.
  • Misaki Takamori
    Graduate School of Science and Technology, Kwansei Gakuin University, Sanda, 669-1337, Hyogo, Japan.
  • Hideyuki Matsumoto
    Graduate School of Medicine, Osaka City University, 545-8585, Osaka, Japan.
  • Keiji Miura
    Graduate School of Information Sciences, Tohoku University, Sendai, Japan. Electronic address: miura@ecei.tohoku.ac.jp.