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Combining Stream Mining and Neural Networks for Short Term Delay Prediction

机译:基于短期延迟预测的流挖掘和神经网络

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The systems monitoring the location of public transport vehicles rely on wireless transmission. The location readings from GPS-based devices are received with some latency caused by periodical data transmission and temporal problems preventing data transmission. This negatively affects identification of delayed vehicles. The primary objective of the work is to propose short term hybrid delay prediction method. The method relies on adaptive selection of Hoeffding trees, being stream classification technique and multilayer perceptrons. In this way, the hybrid method proposed in this study provides anytime predictions and eliminates the need to collect extensive training data before any predictions can be made. Moreover, the use of neural networks increases the accuracy of the predictions compared with the use of Hoeffding trees only.
机译:系统监控公共交通工具的位置依赖无线传输。基于GPS的设备的位置读数被接收到由定期数据传输和防止数据传输的时间问题引起的一些延迟。这对延迟车辆的识别产生负面影响。该工作的主要目标是提出短期混合延迟预测方法。该方法依赖于自适应选择Hoeffding树,是流分类技术和多层感知者。以这种方式,本研究中提出的混合方法提供了随时预测,并消除在可以进行任何预测之前收集广泛训练数据的需要。此外,与仅使用Hoeffding树相比,使用神经网络的使用增加了预测的准确性。

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