ShopProfiler: Profiling Shops with Crowdsourcing Data
Sensing data from mobile phones provide us exciting and profitable applications. Recent research focuses on sensing indoor environment, but suffers from inaccuracy because of the limited reachability of human traces or requires human intervention to perform sophisticated tasks. In this paper, we pre...
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sg-smu-ink.sis_research-44792017-03-07T10:00:33Z ShopProfiler: Profiling Shops with Crowdsourcing Data GUO, Xiaonan CHAN, Eddie C. L. LIU, Ce WU, Kaishun LIU, Siyuan NI, Lionel Sensing data from mobile phones provide us exciting and profitable applications. Recent research focuses on sensing indoor environment, but suffers from inaccuracy because of the limited reachability of human traces or requires human intervention to perform sophisticated tasks. In this paper, we present ShopProfiler, a shop profiling system on crowdsourcing data. First, we extract customer movement patterns from traces. Second, we improve accuracy of building floor plan by adopting a gradient-based approach and then localize shops through WiFi heat map. Third, we categorize shops by designing an SVM classifier in shop space to support multi-label classification. Finally, we infer brand name from SSID by applying string similarity measurement. Based on over five thousand traces in three big malls in two different countries, we conclude that ShopProfiler achieves better accuracy in building refined floor plan, and characterizes shops in terms of location, category and name with little human intervention. 2014-05-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3478 info:doi/10.1109/INFOCOM.2014.6848056 https://ink.library.smu.edu.sg/context/sis_research/article/4479/viewcontent/C98___ShopProfiler_Profiling_Shops_with_Crowdsourcing_Data__IEEE2014_.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 Legged locomotion Mobile handsets IEEE 802.11 Standards Sociology Statistics Radiation detectors Computer Sciences Databases and Information Systems |
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Legged locomotion Mobile handsets IEEE 802.11 Standards Sociology Statistics Radiation detectors Computer Sciences Databases and Information Systems GUO, Xiaonan CHAN, Eddie C. L. LIU, Ce WU, Kaishun LIU, Siyuan NI, Lionel ShopProfiler: Profiling Shops with Crowdsourcing Data |
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Sensing data from mobile phones provide us exciting and profitable applications. Recent research focuses on sensing indoor environment, but suffers from inaccuracy because of the limited reachability of human traces or requires human intervention to perform sophisticated tasks. In this paper, we present ShopProfiler, a shop profiling system on crowdsourcing data. First, we extract customer movement patterns from traces. Second, we improve accuracy of building floor plan by adopting a gradient-based approach and then localize shops through WiFi heat map. Third, we categorize shops by designing an SVM classifier in shop space to support multi-label classification. Finally, we infer brand name from SSID by applying string similarity measurement. Based on over five thousand traces in three big malls in two different countries, we conclude that ShopProfiler achieves better accuracy in building refined floor plan, and characterizes shops in terms of location, category and name with little human intervention. |
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text |
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GUO, Xiaonan CHAN, Eddie C. L. LIU, Ce WU, Kaishun LIU, Siyuan NI, Lionel |
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GUO, Xiaonan CHAN, Eddie C. L. LIU, Ce WU, Kaishun LIU, Siyuan NI, Lionel |
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GUO, Xiaonan |
title |
ShopProfiler: Profiling Shops with Crowdsourcing Data |
title_short |
ShopProfiler: Profiling Shops with Crowdsourcing Data |
title_full |
ShopProfiler: Profiling Shops with Crowdsourcing Data |
title_fullStr |
ShopProfiler: Profiling Shops with Crowdsourcing Data |
title_full_unstemmed |
ShopProfiler: Profiling Shops with Crowdsourcing Data |
title_sort |
shopprofiler: profiling shops with crowdsourcing data |
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Institutional Knowledge at Singapore Management University |
publishDate |
2014 |
url |
https://ink.library.smu.edu.sg/sis_research/3478 https://ink.library.smu.edu.sg/context/sis_research/article/4479/viewcontent/C98___ShopProfiler_Profiling_Shops_with_Crowdsourcing_Data__IEEE2014_.pdf |
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