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Multiple-instance learning with instance selection via constructive covering algorithm

机译:通过构造覆盖算法进行实例选择的多实例学习

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摘要

Multiple-Instance Learning (MIL) is used to predict the unlabeled bags' label by learning the labeled positive training bags and negative training bags. Each bag is made up of several unlabeled instances. A bag is labeled positive if at least one of its instances is positive, otherwise negative. Existing multiple-instance learning methods with instance selection ignore the representative degree of the selected instances. For example, if an instance has many similar instances with the same label around it, the instance should be more representative than others. Based on this idea, in this paper, a multiple-instance learning with instance selection via constructive covering algorithm (MilCa) is proposed. In MilCa, we firstly use maximal Hausdorff to select some initial positive instances from positive bags, then use a Constructive Covering Algorithm (CCA) to restructure the structure of the original instances of negative bags. Then an inverse testing process is employed to exclude the false positive instances from positive bags and to select the high representative degree instances ordered by the number of covered instances from training bags. Finally, a similarity measure function is used to convert the training bag into a single sample and CCA is again used to classification for the converted samples. Experimental results on synthetic data and standard benchmark datasets demonstrate that MilCa can decrease the number of the selected instances and it is competitive with the state-of-the-art MIL algorithms.
机译:多实例学习(MIL)用于通过学习标记的正面训练袋和负面训练袋来预测未标记袋子的标记。每个袋子由几个未贴标签的实例组成。如果某个袋子中至少有一个是正的,则标记为正,否则为负。现有的带有实例选择的多实例学习方法会忽略所选实例的代表性程度。例如,如果一个实例有许多相似的实例,并且周围带有相同的标签,则该实例应比其他实例更具代表性。基于这种思想,本文提出了一种通过构造覆盖算法(MilCa)进行实例选择的多实例学习。在MilCa中,我们首先使用最大的Hausdorff从正袋中选择一些初始正实例,然后使用构造覆盖算法(CCA)重构负袋的原始实例的结构。然后,采用反向测试过程从阳性袋中排除假阳性实例,并从训练袋中选择按照覆盖实例数排序的高代表度实例。最后,相似性度量函数用于将训练包转换为单个样本,CCA再次用于对转换后的样本进行分类。综合数据和标准基准数据集上的实验结果表明,MilCa可以减少所选实例的数量,并且与最新的MIL算法相比具有竞争力。

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