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A k-Nearest Neighbor Based Algorithm for Multi-Instance Multi-Label Active Learning

机译:基于k最近邻的多实例多标签主动学习算法

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Multi-instance multi-label learning (MIML) is a framework in machine learning in which each object is represented by multiple instances and associated with multiple labels. This relatively new approach has achieved success in various applications, particularly those involving learning from complex objects. Because of the complexity of MIML, the cost of data labeling increases drastically along with the improvement of the model performance. In this paper, we introduce a MIML active learning approach to reduce the labeling costs of MIML data without compromising the model performance. Based on a query strategy, we select and request from the Oracle the label set of the most informative object. Our approach is formulated in a pool-based scenario and uses Miml-knn as the base classifier. This classifier for MIML is based on the k-Nearest Neighbor algorithm and has achieved superior performance in different data domains. We proposed novel query strategies and also implemented previously used query strategies for MIML learning. Finally, we conducted an experimental evaluation on various benchmark datasets. We demonstrate that these approaches can achieve significantly improved results than without active selection for all datasets on various evaluation criteria.
机译:多实例多标签学习(MIML)是机器学习中的一个框架,其中每个对象由多个实例表示并与多个标签关联。这种相对较新的方法已在各种应用程序中取得了成功,尤其是那些涉及从复杂对象中学习的应用程序。由于MIML的复杂性,数据标记的成本随着模型性能的提高而急剧增加。在本文中,我们介绍了一种MIML主动学习方法,可在不影响模型性能的情况下减少MIML数据的标注成本。基于查询策略,我们从Oracle中选择并请求信息最丰富的对象的标签集。我们的方法是在基于池的方案中制定的,并使用Miml-knn作为基本分类器。 MIML的此分类器基于k最近邻居算法,并且在不同数据域中均具有出色的性能。我们提出了新颖的查询策略,并且还实现了先前用于MIML学习的查询策略。最后,我们对各种基准数据集进行了实验评估。我们证明,与没有针对各种评估标准对所有数据集进行主动选择相比,这些方法可以实现显着改善的结果。

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