Title :
Social-based traffic information extraction and classification
Author :
Wanichayapong, Napong ; Pruthipunyaskul, Wasawat ; Pattara-atikom, Wasan ; Chaovalit, Pimwadee
Author_Institution :
Nat. Electron. & Comput. Technol. Center (NECTEC), Nat. Sci. & Technol. Dev. Agency (NSTDA), Pathumthani, Thailand
Abstract :
Social networks such as Twitter and Facebook are popular, personal, and real-time in nature. We found that there exists a significant number of traffic information such as traffic congestion, incidents, and weather in Twitter. However, an algorithm is needed to extract and classify the traffic information before publishing (re-tweeting) and becoming useful for others. Traffic information was extracted from Twitter using syntactic analysis and then further classified into two categories: point and link. This method can classify 2,942 traffic tweets into the point category with 76.85% accuracy and classify 331 traffic tweets into the link category with 93.23% accuracy. Our system can report traffic information real-time.
Keywords :
information retrieval; pattern classification; social networking (online); traffic information systems; Facebook; Twitter; link category; point category; real-time traffic information; social networks; social-based traffic information classification; social-based traffic information extraction; syntactic analysis; traffic tweets classification; Accuracy; Data mining; Dictionaries; Filtering; Real time systems; Roads; Twitter; classification; real-time; syntactic analysis; traffic information; twitter;
Conference_Titel :
ITS Telecommunications (ITST), 2011 11th International Conference on
Conference_Location :
St. Petersburg
Print_ISBN :
978-1-61284-668-2
DOI :
10.1109/ITST.2011.6060036