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首页> 外文期刊>Communications Letters, IEEE >Link Quality Classifier with Compressed Sensing Based on ell_1-ell_2 Optimization
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Link Quality Classifier with Compressed Sensing Based on ell_1-ell_2 Optimization

机译:基于ell_1-ell_2优化的具有压缩感知的链路质量分类器

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Network tomography is an inference technique for internal network characteristics from end-to-end measurements. In this letter, we propose a new network tomography scheme to classify communication links into lower or higher quality classes according to their link loss rates. The two-class classification is achieved by the estimation of link loss rates via compressed sensing, which is an emerging theory to obtain a sparse solution from an underdetermined linear system, with regarding link loss rates in the higher quality class as 0. In the proposed scheme, we implement compressed sensing with an ell_1-ell_2 optimization, where the cost function is defined as a sum of ell_1 and ell_2 norms with a mixing parameter, which enables us to control the threshold between the lower and higher quality classes.
机译:网络断层扫描是一种从端到端测量得出内部网络特性的推断技术。在这封信中,我们提出了一种新的网络层析成像方案,可以根据通信链路的链路丢失率将其分为较低或较高质量的类别。两类分类是通过压缩感知估计链路丢失率来实现的,这是从不确定线性系统中获得稀疏解的一种新兴理论,其中将较高质量级别的链路丢失率视为0。方案中,我们使用ell_1-ell_2优化来实现压缩感知,其中成本函数定义为具有混合参数的ell_1和ell_2范数之和,这使我们能够在较低质量等级和较高质量等级之间控制阈值。

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