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Robust extreme learning machine for regression problems with its application to wifi based indoor positioning system

机译:用于回归问题的鲁棒极限学习机及其在基于wifi的室内定位系统中的应用

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We propose two kinds of robust extreme learning machines (RELMs) based on the close-to-mean constraint and the small-residual constraint respectively to solve the problem of noisy measurements in indoor positioning systems (IPSs). We formulate both RELMs as second order cone programming problems. The fact that feature mapping in ELM is known to users is exploited to give the needed information for robust constraints. Real-world indoor localization experimental results show that, the proposed algorithms can not only improve the accuracy and repeatability, but also reduce the deviations and worst case errors of IPSs compared with basic ELM and OPT-ELM based IPSs.
机译:为了解决室内定位系统(IPSs)的噪声测量问题,我们分别提出了两种基于接近均值约束和小残差约束的鲁棒极限学习机。我们将两个RELM都表述为二阶锥规划问题。用户可以了解ELM中的特征映射这一事实,以便为鲁棒约束提供所需的信息。实际的室内定位实验结果表明,与基于基本ELM和基于OPT-ELM的IPS相比,所提出的算法不仅可以提高IPS的准确性和可重复性,而且还可以减少IPS的偏差和最坏情况的错误。

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