• Journal of Geo-information Science
  • Vol. 22, Issue 1, 136 (2020)
Zhixiang FANG1、1、*, Yaqian NI2、2, and Shouqian HUANG1、1
Author Affiliations
  • 1State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079, China
  • 1武汉大学测绘遥感信息工程国家重点实验室,武汉 430079
  • 2Autonavi Holdings Limited, Beijing 102200, China
  • 2高德软件有限公司,北京 102200
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    DOI: 10.12082/dqxxkx.2020.190655 Cite this Article
    Zhixiang FANG, Yaqian NI, Shouqian HUANG. Mobile Phone User Stay Behavior Prediction Method Considering Mobile APP Usage Characterization[J]. Journal of Geo-information Science, 2020, 22(1): 136 Copy Citation Text show less
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    Zhixiang FANG, Yaqian NI, Shouqian HUANG. Mobile Phone User Stay Behavior Prediction Method Considering Mobile APP Usage Characterization[J]. Journal of Geo-information Science, 2020, 22(1): 136
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