首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Weight-and-Universum-based semi-supervised multi-view learning machine
【24h】

Weight-and-Universum-based semi-supervised multi-view learning machine

机译:基于体重和Universum的半监督多视图学习机

获取原文
获取原文并翻译 | 示例
           

摘要

Semi-supervised multi-view learning machine is developed to process the corresponding semi-supervised multi-view data sets which consist of labeled and unlabeled instances. But in real-world applications, for a multi-view data set, only few instances are labeled with the limitation of manpower and cost. As a result, few prior knowledge which is necessary for the designing of a learning machine is provided. Moreover, in practice, different views and features play diverse discriminant roles while traditional learning machines treat these roles equally and assign the same weight just for convenience. In order to solve these problems, we introduce Universum learning to obtain more prior knowledge and assign different weights for views and features to reflect their diverse discriminant roles. The proposed learning machine is named as weight-and-Universum-based semi-supervised multi-view learning machine (WUSM). In WUSM, we first obtain weights of views and features. Then, we construct Universum set to obtain more prior knowledge on the basis of these weights. Different from traditional construction ways, the used construction way makes full use of the information of all labeled and unlabeled instances rather than only a pair of positive and negative training instances. Finally, we design the machine with the usage of the Universum set along with original data set. Our contributions are given as follows. (1) With the usage of all (labeled, unlabeled) instances of the data set, the Universum set provides more useful prior knowledge. (2) WUSM considers the diversities of views and features. (3) WUSM advances the development of semi-supervised multi-view learning machines. Experiments on bipartite ranking, feature selection, dimensionality reduction, classification, clustering, etc. validate the advantages of WUSM and draw a conclusion that with the introduction of Universum learning, view weights, and feature weights, the performance of a semi-supervised multi-view learning machine is boosted.
机译:开发了半监督的多视图学习机以处理相应的半监督多视图数据集,该数据集由标记和未标记的实例组成。但在真实的应用程序中,对于多视图数据集,只有少数实例标记为人力和成本的限制。结果,提供了很少有用于设计学习机器所必需的知识。此外,在实践中,不同的观点和特征在传统的学习机器同样地对待这些角色并为方便起见而分配相同的重量。为了解决这些问题,我们介绍了Universum学习,以获得更多的先验知识,并为视图和特征分配不同的权重,以反映其各种判别的角色。所提出的学习机被命名为基于掌制的半监督多视图学习机(WUSM)。在WUSM中,我们首先获得视图和功能的重量。然后,我们构建Universum设置以基于这些权重获得更多现有知识。不同于传统的施工方式,使用的建筑方式充分利用了所有标签和未标记的情况的信息,而不是一对正面和负培训实例。最后,我们使用Universum集合使用原始数据集设计机器。我们的贡献如下。 (1)通过使用数据集的所有(标记,未标记的)实例,Universum Set提供更有用的先验知识。 (2)WUSM考虑了多样化的观点和特征。 (3)WUSM推进半监督多视图学习机的发展。二分排名的实验,特征选择,维数减少,分类,聚类等验证了WUSM的优势,并得出了一个结论,随着Universum学习,观看重量和特征权重,即半监督多的性能查看学习机已提升。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号