Weighted twin support vector machines (WLTSVM) mines as much potential similarity information in samples as possible to improve the common short-coming of non-parallel plane classifiers. Compared with twin support vector machines (TWSVM), it reduces the time complexity by deleting the superfluous constraints using the inter-class K-Nearest Neighbor (KNN). Multi-view learning (MVL) is a newly developing direction of machine learning, which focuses on learning acquiring information from the data indicated by multiple feature sets. In this paper, we propose multi-view learning with privileged weighted twin support vector machines (MPWTSVM). It not only inherits the advantages of WLTSVM but also has its characteristics. Firstly, it enhances generalization ability by mining intra-class information from the same perspective. Secondly, it reduces the redundancy constraints with the help of inter-class information, thus improving the running speed. Most importantly, it can follow both the consensus and the complementarity principle simultaneously as a multi-view classification model. The consensus principle is realized by minimizing the coupling items of the two views in the original objective function. The complementary principle is achieved by establishing privileged information paradigms and MVL. A standard quadratic programming solver is used to solve the problem. Compared with multi-view classification models such as SVM-2K, MVTSVM, MCPK, and PSVM-2V, our model has better accuracy and classification efficiency. Experimental results on 45 binary data sets prove the effectiveness of our method.
翻译:双重双向支持矢量机(WLTSVM)的地雷,其潜在相似性信息在样本中尽可能多,以改善非平行平面分类器的共同缺点。与双向支持矢量机(TWSVM)相比,它减少了时间复杂性,因为它通过使用K-Nearest Nieghbor(KNNN)删除了多余的限制。多视图学习(MVL)是一个新开发的机器学习方向,它侧重于从多个功能组显示的数据中获取信息。在本文中,我们建议用特权的加权双向支持机(MPWTSVM)进行多视角学习。它不仅继承了WLTSVM的优势,而且还具有其特性。首先,它通过从同一角度挖掘类内信息来提高一般化能力。第二,它通过利用类间信息帮助减少冗余限制,从而提高运行速度。最重要的是,它可以同时遵循我们所达成的共识和互补原则,作为多视角分类模型。通过在原始目标功能中最大限度地使用两种观点双向双向矢量矢量矢量机(MP)的合并项目,实现了协商一致原则。