posted by organizer: LaurentW || 3741 views || tracked by 4 users: [display]

DIT 2018 : Workshop on Data-Driven Intelligent Transportation (in Conjunction with ICDM'18)

FacebookTwitterLinkedInGoogle

Link: http://dm.ist.psu.edu/dit2018/
 
When Nov 17, 2018 - Nov 17, 2018
Where Singapore
Submission Deadline Aug 28, 2018
Notification Due Sep 4, 2018
Final Version Due Sep 15, 2018
Categories    data mining   intelligent transportation   machine learning   artificial intelligence
 

Call For Papers

Workshop on Data-Driven Intelligent Transportation (in Conjunction with ICDM'18)

November 17, 2018
Singapore
http://dm.ist.psu.edu/dit2018/

-------------------------------------------

Traffic is the pulse of the city. Intelligent transportation enables the city to function in a more efficient and effective way. At the same time, city data are growing at an unprecedented speed. A wide range of city data become increasingly available, such as taxi trips, surveillance camera data, human mobility data from mobile phones or location-based services, events from social media, car accident report, bike sharing information, Points-Of-Interest, traffic sensors, public transportation data, and many more.

How to utilize such large-scale city data towards a more intelligent transportation system? This workshop calls for interesting papers with techniques to utilize city data and data mining techniques to improve our transportation system.
Topics of interest include but not limited to:
-Traffic forecasting
-Route planning
-Travel time estimation
-Traffic signal control
-Shared transportation
-Autonomous driving vehicles
-City-wide traffic estimation
-Semantic mobility data understanding
-Large-scale city data analysis and modeling
-Large-scale traffic data visualization and interactive design
-Sustainable transportation system
-City data sensing and collecting
-City data fusion and mining
-Anomaly detection

In particular, this workshop would like to call for research papers sharing the experiences from the real data and real-world practice. We do not require technical innovations (using existing data mining techniques is totally acceptable).

-------------------------------------------

Organizers:

Zhenhui (Jessie) Li, Penn State University
Yan Liu, University of Southern California



Related Resources

EI-WBDC 2021   2021 3rd International Workshop on Big Data and Computing(WBDC 2021)
WSDM 2022   Web Search and Data Mining
SI-D2CSCAI 2021   CfP - Special Issue Data-Driven Cybersecurity and Safety for Critical Applications and Infrastructures (MDPI Sensors - IF= 3.275)
MLNLP 2021   2nd International Conference on Machine Learning Techniques and NLP
ICTTE--Ei Compendex, Scopus 2021   2021 10th International Conference on Transportation and Traffic Engineering (ICTTE 2021)--EI compendex, Scopus
MECHATROJ 2021   Mechatronics and Applications: An International Journal (MECHATROJ)
MDPI-SI-BDHA 2021   Call for Papers: Special Issue “Big Data for eHealth Applications” (MDPI Applied Sciences, IF 2.474 – Indexed on Scopus, Web of Science)
IJAD 2021   International Journal of Advanced Dermatology
IEEE ICITE--EI Compendex, Scopus 2021   2021 IEEE 6th International Conference on Intelligent Transportation Engineering (IEEE ICITE 2021)--Ei Compendex, Scopus
MODELSWARD 2022   10th International Conference on Model-Driven Engineering and Software Development