Title :
Mining the Situation: Spatiotemporal Traffic Prediction With Big Data
Author :
Jie Xu ; Dingxiong Deng ; Demiryurek, Ugur ; Shahabi, Cyrus ; Van der Schaar, Mihaela
Author_Institution :
Dept. of Electr. Eng., Univ. of California at Los Angeles, Los Angeles, CA, USA
Abstract :
With the vast availability of traffic sensors from which traffic information can be derived, a lot of research effort has been devoted to developing traffic prediction techniques, which in turn improve route navigation, traffic regulation, urban area planning, etc. One key challenge in traffic prediction is how much to rely on prediction models that are constructed using historical data in real-time traffic situations, which may differ from that of the historical data and change over time. In this paper, we propose a novel online framework that could learn from the current traffic situation (or context) in real-time and predict the future traffic by matching the current situation to the most effective prediction model trained using historical data. As real-time traffic arrives, the traffic context space is adaptively partitioned in order to efficiently estimate the effectiveness of each base predictor in different situations. We obtain and prove both short-term and long-term performance guarantees (bounds) for our online algorithm. The proposed algorithm also works effectively in scenarios where the true labels (i.e., realized traffic) are missing or become available with delay. Using the proposed framework, the context dimension that is the most relevant to traffic prediction can also be revealed, which can further reduce the implementation complexity as well as inform traffic policy making. Our experiments with real-world data in real-life conditions show that the proposed approach significantly outperforms existing solutions.
Keywords :
Big Data; learning (artificial intelligence); town and country planning; traffic information systems; big data; context dimension; historical data; online algorithm; online framework; prediction models; real-time traffic situations; spatiotemporal traffic prediction techniques; traffic information; traffic policy making; traffic regulation; traffic sensors; urban area planning; Benchmark testing; Context; Partitioning algorithms; Prediction algorithms; Predictive models; Real-time systems; Signal processing algorithms; Traffic prediction; big data; context-aware; online learning; spatiotemporal;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2015.2389196