Highway Toll Forecasting Model

Zhixiong Zhang, Yun Wu
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引用次数: 0

Abstract

Since the complexity of artificial design features in model training, the toll data features cannot be used reasonably and efficiently. Toll prediction of one single station based on toll historical data would ignore the interaction between stations in the highway network. Therefore, this paper constructs a highway toll forecast model, named DBN-MSVR combining deep belief network and multi-task learning for multi-station toll forecasting. This model uses the optimized deep belief network to perform feature learning on toll data, and combines multi-task learning and support vector regression on the top layer of the deep belief network to predict tolls. Experiments show that the DBN-MSVR toll prediction model has higher prediction accuracy than traditional methods.
高速公路收费预测模型
由于模型训练中人工设计特征的复杂性,使得收费数据特征无法得到合理有效的利用。基于历史收费数据进行单站收费预测会忽略路网中各站之间的相互作用。为此,本文将深度信念网络与多任务学习相结合,构建了高速公路收费预测模型DBN-MSVR,用于多站收费预测。该模型利用优化后的深度信念网络对收费数据进行特征学习,并在深度信念网络顶层结合多任务学习和支持向量回归进行收费预测。实验表明,DBN-MSVR通行费预测模型比传统方法具有更高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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