Crowdsensing and analyzing micro-event tweets for public transportation insights
Efficient and commuter friendly public transportation system is a critical part of a thriving and sustainable city. As cities experience fast growing resident population, their public transportation systems will have to cope with more demands for improvements. In this paper, we propose a crowdsensin...
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2017
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sg-smu-ink.sis_research-46522020-10-23T10:03:13Z Crowdsensing and analyzing micro-event tweets for public transportation insights HOANG, Thoong CHER, Pei Hua (XU Peihua) PRASETYO, Philips Kokoh LIM, Ee-Peng Efficient and commuter friendly public transportation system is a critical part of a thriving and sustainable city. As cities experience fast growing resident population, their public transportation systems will have to cope with more demands for improvements. In this paper, we propose a crowdsensing and analysis framework to gather and analyze realtime commuter feedback from Twitter. We perform a series of text mining tasks identifying those feedback comments capturing bus related micro-events; extracting relevant entities; and, predicting event and sentiment labels. We conduct a series of experiments involving more than 14K labeled tweets. The experiments show that incorporating domain knowledge or domain specific labeled data into text analysis methods improves the accuracies of the above tasks. We further apply the tasks on nearly 200M public tweets from Singapore over a six month period to show that interesting insights about bus services and bus events can be derived in a scalable manner. 2017-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3650 info:doi/10.1109/BigData.2016.7840845 https://ink.library.smu.edu.sg/context/sis_research/article/4652/viewcontent/8._Dec02___Crowdsensing_and_Analyzing_Micro_Event_Tweets_for_Public_Transportation_Insights__IEEE_BigData_2016_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Classification Crowdsensing Information extraction Micro-events analysing Sentiment analysis Transportation Computer Sciences Databases and Information Systems |
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Classification Crowdsensing Information extraction Micro-events analysing Sentiment analysis Transportation Computer Sciences Databases and Information Systems HOANG, Thoong CHER, Pei Hua (XU Peihua) PRASETYO, Philips Kokoh LIM, Ee-Peng Crowdsensing and analyzing micro-event tweets for public transportation insights |
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Efficient and commuter friendly public transportation system is a critical part of a thriving and sustainable city. As cities experience fast growing resident population, their public transportation systems will have to cope with more demands for improvements. In this paper, we propose a crowdsensing and analysis framework to gather and analyze realtime commuter feedback from Twitter. We perform a series of text mining tasks identifying those feedback comments capturing bus related micro-events; extracting relevant entities; and, predicting event and sentiment labels. We conduct a series of experiments involving more than 14K labeled tweets. The experiments show that incorporating domain knowledge or domain specific labeled data into text analysis methods improves the accuracies of the above tasks. We further apply the tasks on nearly 200M public tweets from Singapore over a six month period to show that interesting insights about bus services and bus events can be derived in a scalable manner. |
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HOANG, Thoong CHER, Pei Hua (XU Peihua) PRASETYO, Philips Kokoh LIM, Ee-Peng |
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HOANG, Thoong CHER, Pei Hua (XU Peihua) PRASETYO, Philips Kokoh LIM, Ee-Peng |
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HOANG, Thoong |
title |
Crowdsensing and analyzing micro-event tweets for public transportation insights |
title_short |
Crowdsensing and analyzing micro-event tweets for public transportation insights |
title_full |
Crowdsensing and analyzing micro-event tweets for public transportation insights |
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Crowdsensing and analyzing micro-event tweets for public transportation insights |
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Crowdsensing and analyzing micro-event tweets for public transportation insights |
title_sort |
crowdsensing and analyzing micro-event tweets for public transportation insights |
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Institutional Knowledge at Singapore Management University |
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2017 |
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https://ink.library.smu.edu.sg/sis_research/3650 https://ink.library.smu.edu.sg/context/sis_research/article/4652/viewcontent/8._Dec02___Crowdsensing_and_Analyzing_Micro_Event_Tweets_for_Public_Transportation_Insights__IEEE_BigData_2016_.pdf |
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