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Interpretation of Bayesian neural networks for predicting the duration of detected incidents

机译:贝叶斯神经网络的解释,用于预测检测到的事件的持续时间

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摘要

This study introduces Bayesian learning to neural networks for accurate prediction of incident duration. Network parameters are updated using a hybrid Monte Carlo algorithm, and yield reasonable accuracy with mean absolute percentage error of 29%. A pedagogical rule extraction algorithm (TREPAN) is applied to extract comprehensible representations from the neural networks. The TREPAN facilitates better comprehensibility with M-of-N expression, and maintains high predictive accuracy to its respective network. Extracted decision trees provide a discovery and explanation of previously unknown relationships present in incident nature, and represent a series of decisions to assist traffic management operators in better decision making. Furthermore, to quantify the importance of variables from the neural network, a connection weight approach is used. Factors appearing in the first splitter of decision tree show high relative importance, indicating that they are influential for longer or shorter incident duration. Interpretation of Bayesian neural networks is an important addition to the Advanced Traveler Information Systems toolkit.
机译:这项研究将贝叶斯学习引入神经网络以准确预测事件持续时间。使用混合蒙特卡洛算法更新网络参数,并产生合理的精度,平均绝对百分比误差为29%。教学规则提取算法(TREPAN)用于从神经网络中提取可理解的表示形式。 TREPAN有助于更好地理解M-of-N表达,并对其各自的网络保持较高的预测准确性。提取的决策树提供了对事件性质中以前未知关系的发现和解释,并代表了一系列决策,以帮助交通管理运营商做出更好的决策。此外,为了量化来自神经网络的变量的重要性,使用了连接权重方法。出现在决策树第一个拆分器中的因素显示出较高的相对重要性,表明它们对于较长或较短的事件持续时间都具有影响力。贝叶斯神经网络的解释是Advanced Traveler Information Systems工具包的重要补充。

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