Multitask multiclass privileged information support vector machines

作者: Shiliang Sun , You Ji , Yue Lu

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摘要: In this paper, we propose a new learning paradigm named multitask multiclass privileged information support vector machines. The starting point of our work is mainly based on the success machines which cast problems as constrained optimization problem with quadratic objective function. Learning using an advanced integrated idea human teaching in machine learning. This paper extends multi-class to strategy. Our approach can take full advantages and information. Experimental results show that approaches obtains very good for problems.

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