使用语义标记图建模多媒体社会网络

E. G. Caldarola, A. M. Rinaldi
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引用次数: 9

摘要

我们生活在一个联系日益紧密、数据日益贪婪的世界。在过去的十年中,Web上的信息内容在数量、连接性和异质性方面的增长达到了前所未有的程度。众所周知的在线多媒体社会网络(OMSNs)的例子,如Facebook或Twitter,展示了当代Web常见场景的巨大容量和复杂性特征。今天,认识到这一点意味着采用智能信息系统,能够利用数据和数据之间的联系,从这种复杂而密集的网络中获得见解和线索。为了实现这个目标,这些系统应该有正式的模型,能够有效地提取保留在网络中的知识,即使它不是那么明确。通过这种方式,可以管理复杂的数据,并将其用于执行新任务和实现创新功能。本文描述了使用语义标记和基于属性的图模型,通过利用术语之间的语言语义属性和可用的低级多媒体描述符来表示来自OMSNs的信息。多媒体特征采用基于MPEG-7描述符的算法自动提取,并与通用知识库中的文本数据集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling Multimedia Social Networks Using Semantically Labelled Graphs
We live in an increasingly connected and data-greedy world. In the last decade, informative contents over the Web have grown in volume, connectivity and heterogeneity to an extent never seen before. Well known examples of Online Multimedia Social Networks (OMSNs), such as Facebook or Twitter, demonstrate the humongous volume and complexity characterizing common scenarios of the contemporary Web. Recognizing that, today, means adopting intelligent information systems able to use data and links between data to gain insights and clues from such intricate and dense networks. To address this goal, these systems should have formal models able to extract efficiently the knowledge retained in the network, even when it is not so explicit. In this way, complex data can be managed and used to perform new tasks and implement innovative functionalities. This article describes the use of a semantically labelled and property-based graph model in order to represent the information coming from OMSNs by exploiting linguistic-semantic properties between terms and the available low-level multimedia descriptors. The multimedia features are automatically extracted using algorithms based on MPEG-7 descriptors and integrated with textual data from a general knowledge base.
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