summary

From statwiki
Revision as of 23:34, 6 July 2013 by S2eghbal (talk | contribs)
Jump to navigation Jump to search

Introduction

This paper tries to propose a method to learn mappings from high dimensional data to binary codes. One of the main advantages of using binary space is one can do exact KNN classification in sublinear time. Like other metric learning method this paper also tries to optimize some cost function which is based one a similarity measure between data points.