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231224s2016 xx |||||o 00| ||eng c |
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|a 10.1109/TPAMI.2015.2476813
|2 doi
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|a DE-627
|b ger
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|e rakwb
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|a eng
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|a Xu, Xinxing
|e verfasserin
|4 aut
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|a Co-Labeling for Multi-View Weakly Labeled Learning
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|c 2016
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|a Text
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|a ƒaComputermedien
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|a Date Completed 05.06.2017
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|a Date Revised 05.06.2017
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|a published: Print-Electronic
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|a Citation Status PubMed-not-MEDLINE
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|a It is often expensive and time consuming to collect labeled training samples in many real-world applications. To reduce human effort on annotating training samples, many machine learning techniques (e.g., semi-supervised learning (SSL), multi-instance learning (MIL), etc.) have been studied to exploit weakly labeled training samples. Meanwhile, when the training data is represented with multiple types of features, many multi-view learning methods have shown that classifiers trained on different views can help each other to better utilize the unlabeled training samples for the SSL task. In this paper, we study a new learning problem called multi-view weakly labeled learning, in which we aim to develop a unified approach to learn robust classifiers by effectively utilizing different types of weakly labeled multi-view data from a broad range of tasks including SSL, MIL and relative outlier detection (ROD). We propose an effective approach called co-labeling to solve the multi-view weakly labeled learning problem. Specifically, we model the learning problem on each view as a weakly labeled learning problem, which aims to learn an optimal classifier from a set of pseudo-label vectors generated by using the classifiers trained from other views. Unlike traditional co-training approaches using a single pseudo-label vector for training each classifier, our co-labeling approach explores different strategies to utilize the predictions from different views, biases and iterations for generating the pseudo-label vectors, making our approach more robust for real-world applications. Moreover, to further improve the weakly labeled learning on each view, we also exploit the inherent group structure in the pseudo-label vectors generated from different strategies, which leads to a new multi-layer multiple kernel learning problem. Promising results for text-based image retrieval on the NUS-WIDE dataset as well as news classification and text categorization on several real-world multi-view datasets clearly demonstrate that our proposed co-labeling approach achieves state-of-the-art performance for various multi-view weakly labeled learning problems including multi-view SSL, multi-view MIL and multi-view ROD
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|a Journal Article
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|a Li, Wen
|e verfasserin
|4 aut
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|a Xu, Dong
|e verfasserin
|4 aut
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|a Tsang, Ivor W
|e verfasserin
|4 aut
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|i Enthalten in
|t IEEE transactions on pattern analysis and machine intelligence
|d 1979
|g 38(2016), 6 vom: 01. Juni, Seite 1113-25
|w (DE-627)NLM098212257
|x 1939-3539
|7 nnns
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|g volume:38
|g year:2016
|g number:6
|g day:01
|g month:06
|g pages:1113-25
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|u http://dx.doi.org/10.1109/TPAMI.2015.2476813
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