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CommNets: Communicating Neural Network Architectures for Resource Constrained Systems

机译:Commnets:对资源受限系统进行通信神经网络架构

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Applications that require heterogeneous sensor deployments continue to face practical challenges owing to resource constraints within their operating environments (i.e. energy efficiency, computational power and reliability). This has motivated the need for effective ways of selecting a sensing strategy that maximizes detection accuracy for events of interest using available resources and data-driven approaches. Inspired by those limitations, we ask a fundamental question: whether state-of-the-art Recurrent Neural Networks can observe different series of data and communicate their hidden states to collectively solve an objective in a distributed fashion. We realize our answer by conducting a series of systematic analyses of a Communicating Recurrent Neural Network architecture on varying time-steps, objective functions and number of nodes. The experimental setup we employ models tasks synonymous with those in Wireless Sensor Networks. Our contributions show that Recurrent Neural Networks can communicate through their hidden states and we achieve promising results.
机译:由于其操作环境中的资源限制,需要异构传感器部署的应用程序继续面临实际挑战(即能量效率,计算能力和可靠性)。这有需要需要选择一种选择感测策略,从而最大限度地利用可用资源和数据驱动方法来最大限度地提高利息事件的检测准确性。我们提出了基本问题:最先进的经常性神经网络可以观察不同系列的数据,并传达他们隐藏的国家以分布式方式共同解决目标。我们通过在不同的时间步长,客观函数和节点数量上进行通信经常性神经网络架构的一系列系统分析来实现答案。实验设置我们采用模型任务与无线传感器网络中的那些。我们的贡献表明,经常性的神经网络可以通过隐藏状态进行沟通,我们实现了有希望的结果。

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