Title :
Web-Based Traffic Sentiment Analysis: Methods and Applications
Author :
Jianping Cao ; Ke Zeng ; Hui Wang ; Jiajun Cheng ; Fengcai Qiao ; Ding Wen ; Yanqing Gao
Author_Institution :
Nat. Univ. of Defense Technol., Changsha, China
Abstract :
With the booming of social media, sentiment analysis has developed rapidly in recent years. However, only a few studies focused on the field of transportation, which failed to meet the stringent requirements of safety, efficiency, and information exchange of intelligent transportation systems (ITSs). We propose the traffic sentiment analysis (TSA) as a new tool to tackle this problem, which provides a new prospective for modern ITSs. Methods and models in TSA are proposed in this paper, and the advantages and disadvantages of rule- and learning-based approaches are analyzed based on web data. Practically, we applied the rule-based approach to deal with real problems, presented an architectural design, constructed related bases, demonstrated the process, and discussed the online data collection. Two cases were studied to demonstrate the efficiency of our method: the “yellow light rule” and “fuel price” in China. Our work will help the development of TSA and its applications.
Keywords :
Internet; information analysis; intelligent transportation systems; knowledge based systems; learning (artificial intelligence); ITS; TSA; Web data; Web-based traffic sentiment analysis; efficiency requirements; fuel price; information exchange requirements; intelligent transportation systems; learning-based approach; online data collection; rule-based approach; safety requirements; social media; yellow light rule; Context; Data collection; Data mining; Intelligent transportation systems; Semantics; Standards; Training data; Rule base; Web-based; sentiment analysis; sentiment base;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2013.2291241