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Music retrieval based on a multi-samples selection strategy for support vector machine active learning

机译:基于支持向量机器主动学习的多样本选择策略的音乐检索

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In active learning based music retrieval systems, providing multiple samples to the user for feedback is very necessary. In this paper, we present a new multi-samples selection strategy designed for support vector machine active learning. Aiming to reduce the redundancy between the selected samples, the strategy enforces the selected samples to be diverse by explicitly maximizing the distance between each other in the feature space. Experimental results on a music genre database demonstrated the effectiveness of the proposed strategy in selecting relevant multiple samples for human feedback on them.
机译:在基于主动学习的音乐检索系统中,为用户提供多个样本以进行反馈是非常必要的。在本文中,我们提出了一种用于支持向量机器主动学习的新型多样品选择策略。旨在减少所选样本之间的冗余,该策略通过明确地最大化特征空间中彼此之间的距离来实现所选择的样本来实现所选择的样本。音乐类型数据库的实验结果证明了提出的策略在为他们的人体反馈中选择相关的多个样本方面的有效性。

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