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An Improved Diverse Density Algorithm for Multiple Overlapped Instances

机译:多重重叠实例的改进的不同密度算法

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Multiple-instance learning is a special machine learning algorithm between supervised learning and unsupervised learning, which has been used in medicine design, image retrieval and other research fields, and attained good performance. Diverse Density (DD) algorithm is a typical multiple- instance learning method. Due to the character of sparse positive instances, when classifying the bags which include multiple overlapped instances, some negative bags are considered as positive bags. To solve this problem, this paper proposed a new classification method, which modifies the influence strategy of the instances to the bags when classifying the bags. To verify the method, it is used to classify the real and pseudo microRNA precursors in bioinformatics, and has obtained exciting results.
机译:多实例学习是监督学习和无监督学习之间的特殊机器学习算法,该算法已经用于医学设计,图像检索和其他研究领域,并实现了良好的性能。不同密度(DD)算法是典型的多实例学习方法。由于稀疏正面情况的特征,当对包括多个重叠实例的袋子进行分类时,一些负袋被认为是正袋。为了解决这个问题,本文提出了一种新的分类方法,在分类袋子时,将实例的影响策略修改为袋子。为了验证该方法,它用于对生物信息学中的真实和伪微小RORNA前体进行分类,并获得了令人兴奋的结果。

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