Authors
Hong Cao, Chunyu Bao, Xiao-Li Li, Yew-Kwong Woon
Publication date
2014/4/23
Conference
SIAM International Conference of Data Mining
Pages
1-9
Publisher
SIAM
Description
Traditional active learning encounters a cold start issue when very few labelled examples are present for learning a decent initial classifier. Its poor quality subsequently affects selection of the next query and stability of the iterative learning process, resulting in more annotation effort from a domain expert. To address this issue, this paper presents a novel class augmentation technique, which enhances each class's representation which initially consists of only limited set of labelled examples. Our augmentation employs a connectivity-based influence computation algorithm with an incorporated decaying mechanism for the unlabelled samples. Besides augmentation, our method also introduces structure preserving oversampling to correct class imbalance. Extensive experiments on ten publicly available data sets demonstrate the effectiveness of our proposed method over existing state-of-the-art methods. Moreover …
Total citations
Scholar articles
H Cao, C Bao, XL Li, YK Woon - Proceedings of the 2014 SIAM International …, 2014