论文标题

知识驱动的机器学习:关于渠道估计的概念,模型和案例研究

Knowledge-Driven Machine Learning: Concept, Model and Case Study on Channel Estimation

论文作者

Li, Daofeng, Deng, Kaihe, Zhao, Ming, Zhang, Sihai, Zhu, Jinkang

论文摘要

在过去的二十年中,大数据和机器学习的力量在许多领域都得到了巨大证明,这在某种程度上导致了模糊的理解,即迄今为止积累的大量宝贵人类知识似乎不再重要。在本文中,我们开创了提出知识驱动的机器学习(KDML)模型,以表明知识可以在机器学习任务中发挥重要作用。 KDML利用域知识来通过空间转换来处理输入数据,而无需任何培训,这使我们可以简化机器学习网络结构并大大降低培训成本,从而使神经网络的输入数据和输出数据变得相同。渠道估计问题考虑到无线通信中时间选择性和频率选择性褪色的频率选择是作为案例研究的,我们选择最小的正方形(LS)和最小含义误差(MMSE)作为知识模块和长期短期记忆(LSTM)作为学习模块。 KDML通道估计器获得的性能显然胜过知识处理或常规机器学习的性能。我们的工作阐明了机器学习和知识处理的新领域。

The power of big data and machine learning has been drastically demonstrated in many fields during the past twenty years which somehow leads to the vague even false understanding that the huge amount of precious human knowledge accumulated to date no longer seems to matter. In this paper, we are pioneering to propose the knowledge-driven machine learning(KDML) model to exhibit that knowledge can play an important role in machine learning tasks. KDML takes advantage of domain knowledge to processes the input data by space transforming without any training which enable the space of input and the output data of the neural networks to be identical, so that we can simplify the machine learning network structure and reduce training costs significantly. Channel estimation problems considering the time selective and frequency selective fading in wireless communications are taken as a case study, where we choose least square(LS) and minimum meansquare error(MMSE) as knowledge module and Long Short Term Memory(LSTM) as learning module. The performance obtained by KDML channel estimator obviously outperforms that of knowledge processing or conventional machine learning, respectively. Our work sheds light on the new area of machine learning and knowledge processing.

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