DocumentCode :
244884
Title :
Road Traffic Congestion Monitoring in Social Media with Hinge-Loss Markov Random Fields
Author :
Po-Ta Chen ; Feng Chen ; Zhen Qian
fYear :
2014
fDate :
14-17 Dec. 2014
Firstpage :
80
Lastpage :
89
Abstract :
Real-time road traffic congestion monitoring is an important and challenging problem. Most existing monitoring approaches require the deployment of infrastructure sensors or large-scale probe vehicles. Their installation is often expensive and temporal-spatial coverage is limited. Probe vehicle data are oftentimes noisy on urban arterials, and therefore insufficient to provide accurate congestion estimation. This paper presents a novel social-media based approach to traffic congestion monitoring, in which pedestrians, drivers, and passengers a retreated as human sensors and their posted tweets in Twitter as observations of nearby ongoing traffic conditions. There are three technical challenges for road traffic monitoring based on Twitter, namely: 1) language ambiguity in the usage of traffic related terms, 2) uncertainty and low resolution of geographic location mentions, and 3) interactions between traffic-related events such as accidents and congestion. We propose a topic modeling based language model to address the first challenge and a collaborative inference model based on probabilistic soft logic (PSL) to address the second and third challenges. We present a unified statistical framework that combines those two models based on hinge loss Markov random fields (HLMRFs). In order to address the computational challenges incurred by the non-analytical integral of latent variables (factors) and the MAP estimation of a large number of location-dependent traffic congestion variables, we propose a fast approximate inference algorithm based on maximization expectation (ME) and the alternating directed method of multipliers (ADMM). Extensive evaluations over a variety of metrics on real world Twitter and INRIX probe speed datasets in two U.S. Major cities demonstrate the efficiency and effectiveness of our proposed approach.
Keywords :
Markov processes; inference mechanisms; natural language processing; pedestrians; probabilistic logic; road traffic; social networking (online); statistical analysis; traffic engineering computing; HLMRF; INRIX probe speed datasets; MAP estimation; ME; PSL; Twitter; US major cities; alternating directed method of multipliers; approximate inference algorithm; collaborative inference model; drivers; geographic location mention uncertainty; hinge-loss Markov random fields; human sensors; infrastructure sensors; language ambiguity; large-scale probe vehicles; latent variables nonanalytical integral; location-dependent traffic congestion variables; low resolution geographic location mention; maximization expectation; passengers; pedestrians; probabilistic soft logic; road traffic congestion monitoring; social-media based approach; topic modeling based language model; traffic related terms; traffic-related events; unified statistical framework; urban arterials; Accidents; Media; Monitoring; Roads; Sensors; Twitter; Vehicles; Markov Random Fields; Social Media; Traffic Congestion Monitoring;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Mining (ICDM), 2014 IEEE International Conference on
Conference_Location :
Shenzhen
ISSN :
1550-4786
Print_ISBN :
978-1-4799-4303-6
Type :
conf
DOI :
10.1109/ICDM.2014.139
Filename :
7023325
Link To Document :
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