可伸缩的异构转换散列

Ying Wei, Yangqiu Song, Yi Zhen, Bo Liu, Qiang Yang
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引用次数: 35

摘要

哈希在大规模相似度搜索中取得了巨大的成功。近年来,研究人员对多模态哈希进行了研究,以满足跨不同类型媒体的相似性搜索需求。然而,现有的方法大多是跨多视图搜索,其中提供了明确的桥信息。在异构媒体搜索任务中,我们发现在网络上可以找到丰富的多视图数据,这些数据可以作为辅助桥梁。在本文中,我们提出了一种包含这种辅助桥的异构翻译哈希(HTH)方法,不仅可以改进当前的多视图搜索,而且可以实现跨没有直接对应的异构媒体的相似性搜索。HTH同时学习哈希函数,将异构媒体嵌入到不同的汉明空间中,并让翻译器对齐这些空间。与几乎所有在公共Hamming空间中映射异构数据的现有方法不同,映射到不同空间提供了更灵活和判别能力。我们在两个真实世界的大型数据集上验证了算法的有效性和效率,一个是公开可用的Flickr数据集,另一个是Flickr - yahoo Answers数据集。
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Scalable heterogeneous translated hashing
Hashing has enjoyed a great success in large-scale similarity search. Recently, researchers have studied the multi-modal hashing to meet the need of similarity search across different types of media. However, most of the existing methods are applied to search across multi-views among which explicit bridge information is provided. Given a heterogeneous media search task, we observe that abundant multi-view data can be found on the Web which can serve as an auxiliary bridge. In this paper, we propose a Heterogeneous Translated Hashing (HTH) method with such auxiliary bridge incorporated not only to improve current multi-view search but also to enable similarity search across heterogeneous media which have no direct correspondence. HTH simultaneously learns hash functions embedding heterogeneous media into different Hamming spaces, and translators aligning these spaces. Unlike almost all existing methods that map heterogeneous data in a common Hamming space, mapping to different spaces provides more flexible and discriminative ability. We empirically verify the effectiveness and efficiency of our algorithm on two real world large datasets, one publicly available dataset of Flickr and the other MIRFLICKR-Yahoo Answers dataset.
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KDD '22: The 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Washington, DC, USA, August 14 - 18, 2022 KDD '21: The 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, Singapore, August 14-18, 2021 Mutually Beneficial Collaborations to Broaden Participation of Hispanics in Data Science Bringing Inclusive Diversity to Data Science: Opportunities and Challenges A Causal Look at Statistical Definitions of Discrimination
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