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Robust support vector machines for multiple instance learning

机译:支持多实例学习的强大支持向量机

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This paper presents the multiple instance classification problem that can be used for drug and molecular activity prediction, text categorization, image annotation, and object recognition. In order to model a more robust representation of outliers, hard margin loss formulations that minimize the number of misclassified instances are proposed. Although the problem is N P-hard, computational studies show that medium sized problems can be solved to optimality in reasonable time using integer programming and constraint programming formulations. A three-phase heuristic algorithm is proposed for larger problems. Furthermore, different loss functions such as hinge loss, ramp loss, and hard margin loss are empirically compared in the context of multiple instance classification. The proposed heuristic and robust support vector machines with hard margin loss demonstrate superior generalization performance compared to other approaches for multiple instance learning.
机译:本文提出了可用于药物和分子活性预测,文本分类,图像注释和对象识别的多实例分类问题。为了建模离群值的更可靠表示,提出了使错误分类实例数量最小化的硬边际损失公式。尽管问题是N P难的,但计算研究表明,使用整数规划和约束规划公式可以在合理的时间内将中等规模的问题解决到最佳状态。针对较大问题,提出了一种三相启发式算法。此外,在多实例分类的情况下,根据经验比较了不同的损失函数,例如铰链损失,斜坡损失和硬边际损失。与用于多实例学习的其他方法相比,所提出的具有硬余量损失的启发式和鲁棒性支持向量机展示了卓越的泛化性能。

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