计算机科学
概率逻辑
浮动车数据
数据挖掘
数据建模
过程(计算)
智能交通系统
弹道
高斯过程
统计模型
实时计算
人工智能
高斯分布
交通拥挤
运输工程
数据库
操作系统
物理
工程类
量子力学
天文
作者
Lu Lin,Jianxin Li,Feng Chen,Jieping Ye,Jinpeng Huai
标识
DOI:10.1109/tkde.2017.2718525
摘要
Road traffic speed prediction is a challenging problem in intelligent transportation system (ITS) and has gained increasing attentions. Existing works are mainly based on raw speed sensing data obtained from infrastructure sensors or probe vehicles, which, however, are limited by expensive cost of sensor deployment and maintenance. With sparse speed observations, traditional methods based only on speed sensing data are insufficient, especially when emergencies like traffic accidents occur. To address the issue, this paper aims to improve the road traffic speed prediction by fusing traditional speed sensing data with new-type "sensing" data from cross domain sources, such as tweet sensors from social media and trajectory sensors from map and traffic service platforms. Jointly modeling information from different datasets brings many challenges, including location uncertainty of low-resolution data, language ambiguity of traffic description in texts, and heterogeneity of cross-domain data. In response to these challenges, we present a unified probabilistic framework, called Topic-Enhanced Gaussian Process Aggregation Model (TEGPAM), consisting of three components, i.e., location disaggregation model, traffic topic model, and traffic speed Gaussian Process model, which integrate new-type data with traditional data. Experiments on real world data from two large cities validate the effectiveness and efficiency of our model.
科研通智能强力驱动
Strongly Powered by AbleSci AI