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Nonnegative Shared Subspace Learning and Its Application to Social Media Retrieval

机译:非负共享子空间学习及其在社交媒体检索中的应用

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Although tagging has become increasingly popular in online image and video sharing systems, tags are known to be noisy, ambiguous, incomplete and subjective. These factors can seriously affect the precision of a social tag-based web retrieval system. Therefore improving the precision performance of these social tag-based web retrieval systems has become an increasingly important research topic. To this end, we propose a shared subspace learning framework to leverage a secondary source to improve retrieval performance from a primary dataset. This is achieved by learning a shared subspace between the two sources under a joint Nonnegative Matrix Factorization in which the level of subspace sharing can be explicitly controlled. We derive an efficient algorithm for learning the factorization, analyze its complexity, and provide proof of convergence. We validate the framework on image and video retrieval tasks in which tags from the LabelMe dataset are used to improve image retrieval performance from a Flickr dataset and video retrieval performance from a YouTube dataset. This has implications for how to exploit and transfer knowledge from readily available auxiliary tagging resources to improve another social web retrieval system. Our shared subspace learning framework is applicable to a range of problems where one needs to exploit the strengths existing among multiple and heterogeneous datasets.
机译:尽管标记已在在线图像和视频共享系统中变得越来越流行,但是众所周知,标记是嘈杂的,模棱两可的,不完整的和主观的。这些因素会严重影响基于社交标签的Web检索系统的精度。因此,提高这些基于社会标签的网络检索系统的精度性能已成为越来越重要的研究课题。为此,我们提出了一个共享子空间学习框架,以利用辅助资源来提高从主要数据集中的检索性能。这是通过在联合非负矩阵分解条件下学习两个源之间的共享子空间来实现的,其中可以明确控制子空间共享的级别。我们推导了一种有效的算法,用于学习因式分解,分析其复杂性并提供收敛性证明。我们验证了图像和视频检索任务的框架,其中使用LabelMe数据集的标签来改善Flickr数据集的图像检索性能和YouTube数据集的视频检索性能。这对如何利用现成的辅助标签资源中的知识并从中转移知识以改进另一个社交网络检索系统具有影响。我们共享的子空间学习框架适用于一系列问题,这些问题需要利用多个不同数据集之间的现有优势。

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