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Score Normalization and Aggregation for Active Learning in Multi-label Classification
Date Issued
2010-02
Date Available
2021-08-09T11:32:42Z
Abstract
Active learning is useful in situations where labeled data is scarce, unlabeled data is available, and labeling a large number of examples is costly or impractical. These techniques help by identifying a minimal set of examples to label that will support the training of an effective classifier. Thus active learning is particularly relevant for the automation of annotation tasks in multimedia. In this paper we consider the problem of employing active learning for the assignment of multiple annotations or “tags” to images in personal image collections. This form of multi-label classification has received a lot of attention in recent years, however active multi-label classification is still a new research area. The main challenge in active multilabel classification is the selection of unlabeled examples that will be informative for all tags under consideration. This selection task proves surprisingly difficult primarily because of the paucity of labeled data available. In this paper we present some solutions to this problem based on aggregated rankings from classifiers for individual tags.
Sponsorship
Science Foundation Ireland
Type of Material
Technical Report
Publisher
University College Dublin. School of Computer Science and Informatics
Series
UCD CSI Technical Reports
ucd-csi-2010-02
Copyright (Published Version)
2010 the Authors
Language
English
Status of Item
Not peer reviewed
This item is made available under a Creative Commons License
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ucd-csi-2010-02.pdf
Size
2.91 MB
Format
Adobe PDF
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