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Multiple instance learning with correlated features

机译:具有相关功能的多实例学习

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摘要

Multiple instance learning (MIL) has received increasing amount of research interest in machine learning recent years for its wide applications in image classification, text categorization, computer security, etc. Unlike supervised learning, in MIL, only the labels of bags are known, the instance labels in positive bags are not available. Many algorithms make the assumption that the instances in the bags are i.i.d samples, but this may not true in practical applications. In this paper, we treat the negative instances in the positive bag as pairwise partners of the positive instances, by using this correlation information, efficient feature is built to describe the bag. Experiment results show that this description is efficient in real world applications.
机译:由于多实例学习(MIL)在图像分类,文本分类,计算机安全等方面的广泛应用,近年来在机器学习中获得了越来越多的研究兴趣。与监督学习不同,在MIL中,只有袋子的标签是已知的,正面包装袋中的实例标签不可用。许多算法都假设袋子中的实例是i.d.样本,但是在实际应用中可能并非如此。在本文中,我们将正袋子中的负实例视为正实例的成对伙伴,通过使用此相关信息,构建了有效的特征来描述袋子。实验结果表明,该描述在实际应用中是有效的。

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