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首页> 外文期刊>International Journal of Distributed Sensor Networks >Semisupervised Location Awareness in Wireless Sensor Networks Using Laplacian Support Vector Regression
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Semisupervised Location Awareness in Wireless Sensor Networks Using Laplacian Support Vector Regression

机译:使用拉普拉斯支持向量回归的无线传感器网络中的半监督位置感知

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Supervised machine learning has been widely used in context-aware wireless sensor networks (WSNs) to discover context descriptions from sensor data. However, collecting a lot of labeled training data in order to guarantee good performance requires much cost and time. For this reason, the semisupervised learning has been recently developed due to its superior performance despite using only a small amount of the labeled data. In this paper, we extend the standard support vector regression (SVR) to the semisupervised SVR by employing manifold regularization, which we call Laplacian SVR (LapSVR). The LapSVR is compared with the standard SVR and the semisupervised least square algorithm that is another recently developed semisupervised regression algorithm. The algorithms are evaluated for location awareness of multiple mobile robots in a WSN. The experimental results show that the proposed algorithm yields more accurate location estimates than the other algorithms.
机译:有监督的机器学习已广泛用于上下文感知的无线传感器网络(WSN)中,以从传感器数据中发现上下文描述。但是,为了保证良好的性能,收集大量标记的训练数据需要大量的成本和时间。因此,尽管仅使用少量标记数据,但半监督学习由于其优越的性能而最近得到了发展。在本文中,我们通过采用流形正则化将标准支持向量回归(SVR)扩展到半监督SVR,我们将其称为拉普拉斯SVR(LapSVR)。将LapSVR与标准SVR和半监督最小二乘算法进行比较,后者是另一种最近开发的半监督回归算法。对算法进行了评估,以了解WSN中多个移动机器人的位置。实验结果表明,与其他算法相比,该算法产生的定位估计精度更高。

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