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首页> 外文期刊>International Journal of Grid and Utility Computing >An improved multi-instance multi-label learning algorithm based on representative instances selection and label correlations
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An improved multi-instance multi-label learning algorithm based on representative instances selection and label correlations

机译:基于代表性实例选择和标签关联的改进多实例多标签学习算法

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摘要

Multi-Instance Multi-Label Learning (MIML) has been successfully used in image and text classification problems. It is noteworthy that few of the previous studies consider the pattern-label relations. Inevitably, there are some useless instances in a bag which will reduce the accuracy of the annotation. In this paper we focus on this problem. Firstly, an instance selection method via joint l_(2,1)-norms constraint is employed to eliminate the useless instances and select the representative instances by modelling the instance correlation. Then, bags are mapped to these representative instances. Finally, the classifier is trained by an optimisation algorithm based on label correlations. Experimental results on image data set, text data sets and bird song audio data set show that the proposed algorithm significantly improves the performance of MIML classifier compared with the state-of-the-art methods.
机译:多实例多标签学习(MIML)已成功用于图像和文本分类问题。值得注意的是,先前的研究很少考虑模式标签关系。不可避免地,袋子中会有一些无用的实例,这会降低注释的准确性。在本文中,我们重点讨论这个问题。首先,采用通过联合l_(2,1)-范数约束的实例选择方法来消除无用实例,并通过对实例相关性进行建模来选择代表性实例。然后,将袋子映射到这些代表性实例。最后,通过基于标签相关性的优化算法对分类器进行训练。在图像数据集,文本数据集和鸟歌音频数据集上的实验结果表明,与最新方法相比,该算法显着提高了MIML分类器的性能。

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