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Kernel Semi-supervised Extreme Learning Machine Applied in Urban Traffic Congestion Evaluation

机译:内核半监督极限学习机应用于城市交通拥堵评价

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In urban transportation assessment system, semi-supervised extreme learning machine (SSELM) can be used to unite manual observed data and extensively collected data and cooperatively build connection between congestion condition and road information. Optimized by kernel function, Kernel-SSELM can achieve higher classification accuracy and robustness. In this paper, Kernel-SSELM model is used to train the traffic congestion evaluation framework, with both small-scale labeled data and large-scale unlabeled data. Both the experiment and the real-time application show the evaluation system can precisely reflect the traffic condition.
机译:在城市运输评估系统中,半监督的极端学习机(SSELM)可用于联合手动观察的数据,并广泛收集数据,并协同建立拥塞条件和道路信息之间的连接。通过内核函数优化,内核-Sselm可以实现更高的分类精度和稳健性。在本文中,Kernel-SSELM模型用于培训交通拥塞评估框架,具有小规模标记的数据和大规模的未标记数据。实验和实时应用程序都显示评估系统可以精确地反映交通状况。

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