如何选择神经网络架构?—调制分类示例

Anand N. Warrier, Saidhiraj Amuru
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引用次数: 1

摘要

我的问题应该使用哪种神经网络架构?这是现在经常遇到的一个问题。在搜索了过去几年在机器学习和无线通信交叉领域发表的大量论文后,作者发现,在这个多学科领域工作的一些研究人员仍然有同样的问题。在这方面,我们试图通过无线通信领域的一个示例应用来为神经网络的选择提供指导,特别是我们考虑了调制分类。虽然深度学习被广泛地用于处理使用真实世界数据的调制分类,但这些论文都没有给出必须选择的神经网络架构的直觉,以获得良好的分类性能。在我们的研究和实验过程中,我们意识到这个具有简单无线信道模型的简单示例可以作为参考,以了解如何根据所考虑的问题的系统模型选择合适的深度学习模型,特别是神经网络模型。在本文中,我们提供了数值结果来支持在各种情况下产生的直觉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to choose aneural network architecture? – A modulation classification example
Which neural network architecture should be used for my problem? This is a common question that is encountered nowadays. Having searched a slew of papers that have been published over the last few years in the cross domain of machine learning and wireless communications, the authors found that several researchers working in this multi-disciplinary field continue to have the same question. In this regard, we make an attempt to provide a guide for choosing neural networks using an example application from the field of wireless communications, specifically we consider modulation classification. While deep learning was used to address modulation classification quite extensively using real world data, none of these papers give intuition about the neural network architectures that must be chosen to get good classification performance. During our study and experiments, we realized that this simple example with simple wireless channel models can be used as a reference to understand how to choose the appropriate deep learning models, specifically neural network models, based on the system model for the problem under consideration. In this paper, we provide numerical results to support the intuition that arises for various cases.
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