Multiple-instance learning as a classifier combining problem

Yan Li, David M. J. Tax, Robert P. W. Duin, Marco Loog

35 Citations (Scopus)

Abstract

In multiple-instance learning (MIL), an object is represented as a bag consisting of a set of feature vectors called instances. In the training set, the labels of bags are given, while the uncertainty comes from the unknown labels of instances in the bags. In this paper, we study MIL with the assumption that instances are drawn from a mixture distribution of the concept and the non-concept, which leads to a convenient way to solve MIL as a classifier combining problem. It is shown that instances can be classified with any standard supervised classifier by re-weighting the classification posteriors. Given the instance labels, the label of a bag can be obtained as a classifier combining problem. An optimal decision rule is derived that determines the threshold on the fraction of instances in a bag that is assigned to the concept class. We provide estimators for the two parameters in the model. The method is tested on a toy data set and various benchmark data sets, and shown to provide results comparable to state-of-the-art MIL methods.

Original languageEnglish
JournalPattern Recognition
Volume46
Issue number3
Pages (from-to)865-874
Number of pages10
ISSN0031-3203
DOIs
Publication statusPublished - Mar 2013

Fingerprint

Dive into the research topics of 'Multiple-instance learning as a classifier combining problem'. Together they form a unique fingerprint.

Cite this