Model-Aided Wireless Artificial Intelligence: Embedding Expert Knowledge in Deep Neural Networks Towards Wireless Systems Optimization

08/05/2018
by   Alessio Zappone, et al.
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Deep learning based on artificial neural networks is a powerful machine learning method that, in the last few years, has been successfully used to realize tasks, e.g., image classification, speech recognition, translation of languages, etc., that are usually simple to execute by human beings but extremely difficult to perform by machines. This is one of the reasons why deep learning is considered to be one of the main enablers to realize the notion of artificial intelligence. The current methodology in deep learning methods consists of employing a data-driven approach in order to identify the best architecture of an artificial neural network that allows one to fit input-output data pairs. Once the artificial neural network is trained, it is capable of responding to never-observed inputs by providing the optimum output based on past acquired knowledge. In this context, a recent trend in the deep learning community is to complement pure data-driven approaches with prior information based on expert knowledge. This work describes two methods that implement this strategy in the context of wireless communications, also providing specific case-studies to assess the performance compared to pure data-driven approaches.

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