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A cognitive-based solution for semantic knowledge and content dissemination in opportunistic networks

机译:基于认知的语义知识和机遇网络中的内容传播解决方案

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Opportunistic networking is one of the key paradigms to support direct communication between devices in a mobile scenario. In this context, the high volatility and dynamicity of information and the fact that mobile nodes have to make decisions in condition of partial or incomplete knowledge, makes the development of effective and efficient data dissemination schemes very challenging. In this paper we present algorithms based on well-established models in cognitive sciences, in order to disseminate both data items, and semantic information associated with them. In our approach, semantic information represents both meta-data associated to data items (e.g., tags associated to them), and meta-data describing the interests of the users (e.g., topics for which they would like to receive data items). Our solution exploits dissemination of semantic data about the users' interests to guide the dissemination of the corresponding data items. Both dissemination processes are based on models coming from the cognitive sciences field, named cognitive heuristics, which describe how humans organise information in their memory and exchange it during interactions based on partial and incomplete information. We exploit a model describing how semantic data can be organised in each node in a semantic network, based on how humans organise information in their memory. Then, we define algorithms based on cognitive heuristics to disseminate both semantic data and data items between nodes upon encounters. Finally, we provide initial performance results about the diffusion of interests among users, and the corresponding diffusion of data items.
机译:机会主义网络是支持移动方案中设备之间直接通信的关键范例之一。在这种情况下,信息的高波动性和动力学以及移动节点必须在部分或不完整知识的条件下做出决策,使得有效和高效的数据传播方案的发展非常具有挑战性。在本文中,我们将基于认知科学熟悉模型的算法,以传播数据项,以及与它们相关联的语义信息。在我们的方法中,语义信息代表与数据项相关联的元数据(例如,与它们相关联的标签),以及描述用户兴趣的元数据(例如,他们希望接收数据项的主题)。我们的解决方案利用传播关于用户兴趣的语义数据,以指导相应数据项的传播。传播过程都是基于来自认知科学领域的模型,名为认知启发式,这描述了人类如何在他们的内存中组织信息并在基于部分和不完整信息的交互期间交换。我们利用描述如何在语义网络中的每个节点中组织语义数据的模型,这基于人类如何组织内存中的信息。然后,我们根据认知启发式法定义算法,以在遇到时传播节点之间的语义数据和数据项。最后,我们提供关于用户之间感兴趣的扩散的初始性能结果,以及数据项的相应扩散。

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