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When is Enough Enough? 'Just Enough' Decision Making with Recurrent Neural Networks for Radio Frequency Machine Learning

机译:什么时候足够? “足够的”决策与射频机器学习的经常性神经网络

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Prior work has demonstrated that recurrent neural network architectures show promising improvements over other machine learning architectures when processing temporally correlated inputs, such as wireless communication signals. Additionally, recurrent neural networks typically process data on a sequential basis, enabling the potential for near real-time results. In this work, we investigate the novel usage of "just enough" decision making metrics for making decisions during inference based on a variable number of input received symbols. Since some signals are more complex than others, due to channel conditions, transmitter/receiver effects, etc., being able to dynamically utilize just enough of the received symbols to make a reliable decision allows for more efficient decision making in applications such as electronic warfare and dynamic spectrum sharing. To demonstrate the validity of this concept, four approaches to making "just enough" decisions are considered in this work and each are analyzed for their applicability to wireless communication machine learning applications.
机译:在处理时间相关的输入(例如无线通信信号)时,经常工作已经证明了经常性神经网络架构显示出对其他机器学习架构的有希望改进。另外,经常性神经网络通常以顺序基础处理数据,从而实现近实时结果的可能性。在这项工作中,我们研究了“公正”决策的新颖使用,以基于可变数量的输入接收符号在推理期间做出决策。由于某些信号比其他信号更复杂,因为信道条件,发射机/接收器效应等,能够动态地利用所接收的符号,以使可靠的决定允许在电子战中的应用中进行更有效的决策和动态频谱共享。为了证明这一概念的有效性,在这项工作中考虑了四种制作“足够”决定的方法,每个方法都分析了他们对无线通信机学习应用的适用性。

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