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Machine Learning for In-Region Location Verification in Wireless Networks

机译:用于无线网络中区域内位置验证的机器学习

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摘要

In-region location verification (IRLV) aims at verifying whether a user is inside a region of interest (ROI). In wireless networks, IRLV can exploit the features of the channel between the user and a set of trusted access points. In practice, the channel feature statistics is not available and we resort to machine learning (ML) solutions for IRLV. We first show that solutions based on either neural networks (NNs) or support vector machines (SVMs) with typical loss functions are Neyman-Pearson (N-P)-optimal at learning convergence for sufficiently complex learning machines and large training datasets. For a finite training, ML solutions are more accurate than the N-P test based on estimated channel statistics. Then, as estimating channel features outside the ROI may be difficult, we consider one-class classifiers, namely auto-encoder NNs and one-class SVMs which, however, are not equivalent to the generalized likelihood ratio test (GLRT), typically replacing the N-P test in the one-class problem. Numerical examples support the results in realistic wireless networks, with channel models including path-loss, shadowing, and fading.
机译:区域内位置验证(IRLV)旨在验证用户是否在关注区域(ROI)内。在无线网络中,IRLV可以利用用户与一组可信访问点之间的信道功能。实际上,通道特征统计信息不可用,我们采用IRLV的机器学习(ML)解决方案。我们首先显示,基于神经网络(NN)或具有典型损失函数的支持向量机(SVM)的解决方案对于复杂的学习机和大型训练数据集,在学习收敛时是Neyman-Pearson(N-P)-最优的。对于有限训练,基于估计的信道统计信息,机器学习解决方案比N-P测试更准确。然后,由于可能难以估算ROI外的渠道特征,因此我们考虑一类分类器,即自动编码器NN和一类SVM,但是它们不等同于广义似然比测试(GLRT),通常会取代NP测试中的一类问题。数值示例通过信道模型(包括路径损耗,阴影和衰落)支持了现实无线网络中的结果。

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