Traffic congestion is a major concern in many cities around the world. Previous work mainly focuses on the prediction of congestion and analysis of traffic flows, while the congestion correlation between road segments has not been studied yet. In this paper, we propose a three-phase framework to study the congestion correlation between road segments from multiple real world data. In the first phase, we extract congestion information on each road segment from GPS trajectories of over 10,000 taxis, define congestion correlation and propose a corresponding mining algorithm to find out all the existing correlations. In the second phase, we extract various features on each pair of road segments from road network and POI data. In the last phase, ...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
For the issue that existing approaches on studying traffic conditions using GPS traces lack of detai...
Accurate prediction of traffic congestion at the granularity of road segment is important for planni...
2015-2016 > Academic research: refereed > Refereed conference paperAccepted ManuscriptPublishe
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
Abstract With the rapid adoption of wireless sensor networks (WSNs) into smart cities and vehicle n...
Prediction of traffic congestion is one of the core issues in the realization of smart traffic. Accu...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
Short-term traffic prediction (e.g., less than 15 min) is challenging due to severe fluctuations of ...
Urban congestion can be classified into two types: Recurrent Congestion (RC) and Non-Recurrent Conge...
Vehicular traffic congestion is becoming a major problem in metropolitan cities throughout the world...
Traffic congestion has gradually become a focal issue in people\u27s daily life. When the traffic fl...
The discovery of spatio-temporal dependencies within urban road networks that cause Recurrent Conges...
For decades, various algorithms to predict traffic flow have been developed to address traffic conge...
Traffic congestion wastes time, energy, and, thus, money. While well understood on highways, detecti...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
For the issue that existing approaches on studying traffic conditions using GPS traces lack of detai...
Accurate prediction of traffic congestion at the granularity of road segment is important for planni...
2015-2016 > Academic research: refereed > Refereed conference paperAccepted ManuscriptPublishe
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
Abstract With the rapid adoption of wireless sensor networks (WSNs) into smart cities and vehicle n...
Prediction of traffic congestion is one of the core issues in the realization of smart traffic. Accu...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
Short-term traffic prediction (e.g., less than 15 min) is challenging due to severe fluctuations of ...
Urban congestion can be classified into two types: Recurrent Congestion (RC) and Non-Recurrent Conge...
Vehicular traffic congestion is becoming a major problem in metropolitan cities throughout the world...
Traffic congestion has gradually become a focal issue in people\u27s daily life. When the traffic fl...
The discovery of spatio-temporal dependencies within urban road networks that cause Recurrent Conges...
For decades, various algorithms to predict traffic flow have been developed to address traffic conge...
Traffic congestion wastes time, energy, and, thus, money. While well understood on highways, detecti...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
For the issue that existing approaches on studying traffic conditions using GPS traces lack of detai...
Accurate prediction of traffic congestion at the granularity of road segment is important for planni...