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Multi-Instance Learning from Supervised View

机译:从监督的角度进行多实例学习

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In multi-instance learning, the training set comprises labeled bags that are composed of unlabeled instances, and the task is to predict the labels of unseen bags. This paper studies multi-instance learning from the view of supervised learning. First, by analyzing some representative learning algorithms, this paper shows that multi-instance learners can be derived from supervised learners by shifting their focuses from the discrimination on the instances to the discrimination on the bags. Second, considering that ensemble learning paradigms can effectively enhance supervised learners, this paper proposes to build multi-instance ensembles to solve multi-instance problems. Experiments on a real-world benchmark test show that ensemble learning paradigms can significantly enhance multi-instance learners.
机译:在多实例学习中,训练集包括由未标记实例组成的标记袋,任务是预测未看见的袋的标记。本文从监督学习的角度研究了多实例学习。首先,通过分析一些有代表性的学习算法,本文表明,通过将学习重点从实例的区分转移到袋子的区分,可以从有监督的学习者中派生出多实例学习者。其次,考虑到整体学习范式可以有效地提高有监督学习者的学习能力,本文提出了构建多实例集合的方法来解决多实例问题。实际基准测试的实验表明,集成学习范例可以显着增强多实例学习者的学习能力。

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