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Multiple-instance active learning

Published: 03 December 2007 Publication History

Abstract

We present a framework for active learning in the multiple-instance (MI) setting. In an MI learning problem, instances are naturally organized into bags and it is the bags, instead of individual instances, that are labeled for training. MI learners assume that every instance in a bag labeled negative is actually negative, whereas at least one instance in a bag labeled positive is actually positive. We consider the particular case in which an MI learner is allowed to selectively query unlabeled instances from positive bags. This approach is well motivated in domains in which it is inexpensive to acquire bag labels and possible, but expensive, to acquire instance labels. We describe a method for learning from labels at mixed levels of granularity, and introduce two active query selection strategies motivated by the MI setting. Our experiments show that learning from instance labels can significantly improve performance of a basic MI learning algorithm in two multiple-instance domains: content-based image retrieval and text classification.

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Information & Contributors

Information

Published In

cover image Guide Proceedings
NIPS'07: Proceedings of the 20th International Conference on Neural Information Processing Systems
December 2007
1736 pages
ISBN:9781605603520

Publisher

Curran Associates Inc.

Red Hook, NY, United States

Publication History

Published: 03 December 2007

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  • (2021)Computer-Assisted Cohort Identification in PracticeACM Transactions on Computing for Healthcare10.1145/34834113:2(1-28)Online publication date: 20-Dec-2021
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