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Deep learning-based learning to rank with ties for image re-ranking

机译:基于深入的学习学习,以用于图像重新排名的关系等级

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In existing learning to rank problems, the learned ranking function sorts objects according to their predicted scores. Therefore, a full-ordering object list is obtained even if two or more objects have almost identical degrees of relevance (or called objects with ties). For objects containing ties, a more reasonable ranking approach is to learn a ranking function which can judge both the preference and ties relationships among objects. In this paper, we propose a new pairwise ranking algorithm and apply it to image re-ranking. Specifically, we utilize deep learning to re-rank images based on a new loss function. The ties-relationship is considered in both training and testing process. As a result, the learned ranking function can be used to rank objects containing ties. The experimental results demonstrate the effectiveness of the proposed algorithm.
机译:在现有的学习对排名问题中,学习的排名功能根据预测分数对对象进行排序。因此,即使两个或更多个对象具有几乎具有几乎相同的相关性(或具有Ties的对象),也可以获得全新的对象列表。对于包含关系的物体,更合理的排名方法是学习一个排名功能,可以判断物体之间的偏好和关系。在本文中,我们提出了一种新的成对排名算法,并将其应用于图像重新排名。具体而言,我们利用深度学习基于新的损失函数重新排列图像。在训练和测试过程中考虑了联系关系。因此,学习的排名函数可用于对包含Ties的对象进行排名。实验结果表明了所提出的算法的有效性。

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