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Linear Twin SVM for Learning from Label Proportions

机译:线性Twin SVM,可从标签比例中学习

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摘要

In this paper, we study the problem of learning from label proportions in which label information of data is provided in bag level. In this kind of problem, training data is grouped into various bags and only the proportions of positive instances is known. Inspired by proportion-SVM, we propose a new classification model based on twin SVM, which is also in a large-margin framework and only needs to solve two smaller problems. Avoiding making restrictive assumptions of the data, our model can learn the labels of every single instance based on group proportions information. In order to solve the non-convex problem in our new model, we propose an alternative algorithm to obtain the optimal solution efficiently. Also, we prove the effectiveness of our method in theoretical and experimental way.
机译:在本文中,我们研究了从标签比例中学习的问题,在标签比例中,数据的标签信息以包装级别提供。在这种问题中,训练数据被分组到各种袋子中,只有阳性实例的比例是已知的。受比例支持向量机的启发,我们提出了一种基于孪生支持向量机的新分类模型,该模型也属于大利润框架,仅需要解决两个较小的问题。避免对数据进行限制性假设,我们的模型可以基于组比例信息来学习每个实例的标签。为了解决我们新模型中的非凸问题,我们提出了一种替代算法来有效地获得最优解。此外,我们在理论和实验上证明了我们方法的有效性。

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