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首页> 外文期刊>Advances in Artificial Intelligence >Twin Support Vector Machine for Multiple Instance Learning Based on Bag Dissimilarities
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Twin Support Vector Machine for Multiple Instance Learning Based on Bag Dissimilarities

机译:基于包的多实例学习的双支持向量机

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摘要

In multiple instance learning (MIL) framework, an object is represented by a set of instances referred to as bag. A positive class label is assigned to a bag if it contains at least one positive instance; otherwise a bag is labeled with negative class label. Therefore, the task of MIL is to learn a classifier at bag level rather than at instance level. Traditional supervised learning approaches cannot be applied directly in such kind of situation. In this study, we represent each bag by a vector of its dissimilarities to the other existing bags in the training dataset and propose a multiple instance learning based Twin Support Vector Machine (MIL-TWSVM) classifier. We have used different ways to represent the dissimilarity between two bags and performed a comparative analysis of them. The experimental results on ten benchmark MIL datasets demonstrate that the proposed MIL-TWSVM classifier is computationally inexpensive and competitive with state-of-the-art approaches. The significance of the experimental results has been tested by using Friedman statistic and Nemenyi post hoc tests.
机译:在多实例学习(MIL)框架中,对象由称为袋子的一组实例表示。如果它包含至少一个正实例,则将正类标签分配给袋子;否则,袋子标有负类标签。因此,MIL的任务是在BAG级别而不是在实例级别学习分类器。传统的监督学习方法不能直接应用于这种情况。在这项研究中,我们通过对训练数据集中的其他现有袋子的相似之处的向量表示每个袋子,并提出基于多实例的基于学习的双支持向量机(MIL-TWSVM)分类器。我们使用不同的方法来代表两个袋子之间的异化,并对它们进行比较分析。十个基准MIL数据集的实验结果表明,所提出的MIL-TWSVM分类器是计算地廉价且与最先进的方法竞争。通过使用弗里德曼统计和Nemenyi后Hoc测试测试了实验结果的重要性。

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