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Rank canonical correlation analysis and its application in visual search reranking

机译:秩典范相关分析及其在视觉搜索排名中的应用

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摘要

Ranking relevance degree information is widely utilized in the ranking models of information retrieval applications, such as text and multimedia retrieval, question answering, and visual search reranking. However, existing feature dimensionality reduction methods neglect this kind of valuable potential supervised information. In this paper, we extend the pairwise constraints from the traditional class labels to ranking relevance degrees, and propose a novel dimensionality reduction method called Rank-CCA. Rank-CCA effectively incorporates ranking relevance constraints into standard canonical correlation analysis (CCA) algorithm, and is able to employ the knowledge of both unlabeled and labeled data. In the application of visual search reranking, our proposed method is verified through extensive experimental studies. Experimental results show that Rank-CCA is superior to standard CCA and semi-supervised CCA (Semi-CCA) algorithm, and achieves comparable performance with several state-of-the-art reranking methods while preserving the superiority of low dimensional features.
机译:排名相关度信息广泛用于信息检索应用程序的排名模型中,例如文本和多媒体检索,问题回答和视觉搜索重新排名。然而,现有特征降维方法忽略了这种有价值的潜在监督信息。在本文中,我们将成对的约束从传统的类别标签扩展到排名相关度,并提出了一种新的降维方法,称为Rank-CCA。 Rank-CCA有效地将排名相关性约束纳入标准规范相关分析(CCA)算法中,并且能够利用未标记和标记数据的知识。在视觉搜索排名中的应用,我们的方法已通过广泛的实验研究得到验证。实验结果表明,Rank-CCA优于标准CCA和半监督CCA(Semi-CCA)算法,并且在保留低维特征的优势的同时,可以通过几种最新的重排序方法达到可比的性能。

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