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JEREMIE: Joint Semantic Feature Learning via Multi-relational Matrix Completion

机译:JEREMIE:通过多关系矩阵完成的联合语义特征学习

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摘要

The relations among heterogeneous data objects (e.g., image, tag, user and geographical point-of-interest (POI)) on interactive Online Social Media (OSM) play an important information source in describing complicated connections among Web entities (users and POIs) and items (images). Jointly predicting multiple relations instead of single relation completion in separate tasks facilitates sufficient knowledge sharing among heterogeneous relations and mitigate the information imbalance among different tasks. In this paper, we propose JEREMIE, a Joint SEmantic FeatuRe LEarning model via Multi-relational Matrix ComplEtion, which jointly complements the semantic features of different entities from heterogeneous domains. Specifically, to perform appropriate information averaging, we first divide the social image collection into data blocks according to the affiliated user and POI information, where POIs are detected by mean shift from the GPS information. Then we develop a block-wise batch learning method which jointly learns the semantic features (e.g., image-tag, POI-tag and user-tag relations) by optimizing a transductive matrix completion framework with structure preservation and appropriate information averaging functionality. Experimental results on automatic image annotation, image-based user retrieval and image-based POI retrieval demonstrate that our approach achieves promising performance in various relation prediction tasks on six city-scale OSM datasets.
机译:交互式在线社交媒体(OSM)上异构数据对象(例如图像,标签,用户和地理关注点(POI))之间的关系在描述Web实体(用户和POI)之间的复杂连接方面起着重要的信息源作用和项目(图像)。在单独的任务中联合预测多个关系而不是单个关系完成有利于异构关系之间充分的知识共享,并减轻了不同任务之间的信息不平衡。在本文中,我们提出了JEREMIE,这是一种通过多关系矩阵补全的联合语义特征学习模型,可以共同补充来自异构域的不同实体的语义特征。具体而言,为了执行适当的信息平均,我们首先根据关联用户和POI信息将社交图像集合划分为数据块,其中POI是通过从GPS信息进行均值偏移来检测的。然后,我们开发了一种分块批处理学习方法,该方法通过优化具有结构保留和适当信息平均功能的转导矩阵完成框架来共同学习语义特征(例如图像标签,POI标签和用户标签关系)。在自动图像注释,基于图像的用户检索和基于图像的POI检索方面的实验结果表明,我们的方法在六个城市规模的OSM数据集的各种关系预测任务中均实现了有希望的性能。

著录项

  • 来源
  • 会议地点 Munich(DE)
  • 作者单位

    Key Lab of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing 100190, China;

    Key Lab of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing 100190, China;

    The Global Center for Big Mobile Intelligence, Frontier Science and Technology Research Centre, Shenzhen Institutes of Advanced Technology, CAS, Shenzhen 518055, China;

    Key Lab of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing 100190, China;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multi-relational learning; Semantic feature Matrix completion; Information retrieval;

    机译:多元关系学习;语义特征矩阵完成;信息检索;

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