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Integrated Computing, Caching, and Communication for Trust-Based Social Networks: A Big Data DRL Approach

机译:基于信任的社交网络的集成计算,缓存和通信:大数据DRL方法

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Recent advances of computing, caching, and communication (3C) can have significant impacts on mobile social networks (MSNs). MSNs can leverage these new paradigms to provide a new mechanism for users to share resources (e.g., information, computation-based services). In this paper, we exploit the intrinsic nature of social networks, i.e., the trust formed through social relationships among users, to enable users to share resources under the framework of 3C. Specifically, we consider the mobile edge computing (MEC), in-network caching and device-to-device (D2D) communications. When considering the trust-based MSNs with MEC, caching and D2D, we apply a novel big data deep reinforcement learning (DRL) approach to automatically make a decision for optimally allocating the network resources. The decision is made purely through observing the network's states, rather than any handcrafted or explicit control rules, which makes it adaptive to variable network conditions. Google TensorFlow is used to implement the proposed deep Q-learning approach. Simulation results with different network parameters are presented to show the effectiveness of the proposed scheme.
机译:最近的计算,缓存和通信(3C)的进步可能对移动社交网络(MSN)产生重大影响。 MSN可以利用这些新的范例为用户共享资源的新机制(例如,信息,基于计算的服务)。在本文中,我们利用了社交网络的内在性质,即通过用户之间的社会关系形成的信任,使用户能够在3C的框架下共享资源。具体地,我们考虑移动边缘计算(MEC),网络内高速缓存和设备到设备(D2D)通信。在考虑使用MEC,CACHING和D2D的基于信任的MSNS时,我们应用一个新的大数据深度加强学习(DRL)方法来自动做出最佳地分配网络资源的决定。该决定纯粹是通过观察网络的状态,而不是任何手工制作或明确的控制规则,这使得它适应可变网络条件。 Google Tensorflow用于实施提议的深度Q学习方法。提出了具有不同网络参数的仿真结果以显示所提出的方案的有效性。

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