2016
DOI: 10.1109/tkde.2016.2535283
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Large Margin Distribution Learning with Cost Interval and Unlabeled Data

Abstract: In many real-world applications, different types of misclassification usually suffer from different costs, but the accurate cost is often hard to be determined and usually one can only get an interval-estimation like that one type of mistake is about five to ten times more serious than the other type. On the other hand, there are usually abundant unlabeled data available, leading to great research effort about semi-supervised learning. It is noticeable that cost interval and unlabeled data usually appear simul… Show more

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Cited by 33 publications
(12 citation statements)
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“…Thereafter, varieties of methods based on margin distribution have been proposed. Zhou and Zhou (2016) and Zhou (2017, 2018) generalized ODM to class imbalance learning, multi-class learning and unsupervised learning respectively. In weakly supervised learning (Zhou 2018), Zhang and Zhou (2018a) proposed the semi-supervised ODM(ssODM), which achieved significant improvement in performance compared to SVM-based methods.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Thereafter, varieties of methods based on margin distribution have been proposed. Zhou and Zhou (2016) and Zhou (2017, 2018) generalized ODM to class imbalance learning, multi-class learning and unsupervised learning respectively. In weakly supervised learning (Zhou 2018), Zhang and Zhou (2018a) proposed the semi-supervised ODM(ssODM), which achieved significant improvement in performance compared to SVM-based methods.…”
Section: Related Workmentioning
confidence: 99%
“…In addition to classic supervised learning tasks, there is also a series of work in various tasks verifying the better generalization performance of optimizing margin distribution. For example, Zhou and Zhou (2016) extended the idea to exploit unlabeled data and handle unequal misclassification cost; Zhang and Zhou (2018) proposed the margin distribution machine for clustering. Tan et al (2019) accelerated the kernel methods and applied the idea to large-scale datasets.…”
Section: Introductionmentioning
confidence: 99%
“…Instead of changing the distribution of the original data, this approach improves the algorithm to fit the imbalanced data. There are many works based on the algorithm level, such as the threshold method, 9 one‐class learning, 10,11 and cost‐sensitive learning 12,13 . The third is hybrid approach, which combines the sampling methods with the algorithm‐level approaches to form an ensemble system or a neural network 4 .…”
Section: Introductionmentioning
confidence: 99%
“…Specifically, Zhang and Zhou (2014; proposed the optimal margin distribution machines (ODMs) for binary and multi-class classification problems respectively, and achieved superior generalization performance to the traditional large margin based methods. After that, the optimal margin distribution learning has turned into a promising research direction and attracted a lot of attentions, just to name a few, Zhou and Zhou (2016) exploit it to handle unequal misclassification cost; Cheng, Zhang, and Wen (2016) use it for imbalanced data; Ou et al (2017) applies it to feature elimination; Zhang and Zhou (2018a;2018b) extends it to clustering and semi-supervised learning settings.…”
Section: Introductionmentioning
confidence: 99%