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Multi-View Support Vector Machines with the Consensus and Complementarity Information

机译:多视图支持向量机与共识和互补信息

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摘要

Multi-view learning (MVL) is an active direction in machine learning that aims at exploiting the consensus and complementarity information among multiple distinct feature sets to boost the generalization performance of the counterpart algorithm. So far, two classical SVM-based MVL methods are SVM-2K and multi-view twin support vector machine (MvTSVM). They are designed only for two-view classification and cannot tackle the general multi-view classification problem. They also cannot effectively leverage the complementarity information among different feature views. In this paper, we propose two novel multi-view support vector machines with the consensus and complementarity information for MVL that not only can deal with the two-view classification problem but also the general multi-view classification problem by jointly learning multiple different views in a non-pairwise way. The disagreement among different views is regarded as a constraint or a regularization term in the objective function which plays an important role in exploring the consensus information. Combination weights for the reconstruction of each view in regularization terms are learned to explore complementarity information among different views. Finally, an efficient iteration algorithm with the classical convex quadratic programming is developed for optimization. Experimental results validate the effectiveness of our proposed methods.
机译:多视图学习(MVL)是机器学习中的活动方向,旨在利用多个不同特征集之间的共识和互补信息来提高对应算法的泛化性能。到目前为止,两个基于SVM的MVL方法是SVM-2K和多视图双支持向量机(MVTSVM)。它们仅针对双视图分类设计,不能解决一般的多视图分类问题。它们也无法有效地利用不同的特征视图之间的互补信息。在本文中,我们提出了两种新的多视图支持向量机,其中包括MVL的共识和互补信息,不仅可以处理双视图分类问题,而且还通过共同学习多个不同的视图来处理一般的多视图分类问题非成对方式。不同视图之间的分歧被视为目标函数中的约束或正则化术语,在探索共识信息方面发挥着重要作用。学习在正则化术语中重新构建的组合权重,以探索不同视图之间的互补信息。最后,开发了具有经典凸二次编程的高效迭代算法进行优化。实验结果验证了我们提出的方法的有效性。

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