Efficient spatiotemporal interpolation with spark machine learning

被引:0
|
作者
Weitian Tong
Lixin Li
Xiaolu Zhou
Jason Franklin
机构
[1] Georgia Southern University,Department of Computer Science
[2] Georgia Southern University,Department of Geology and Geography
来源
Earth Science Informatics | 2019年 / 12卷
关键词
Spatiotemporal interpolation; Spark; Machine learning; Inverse distance weighting (IDW); k-d tree; Bootstrap aggregating;
D O I
暂无
中图分类号
学科分类号
摘要
To better assess the relationships between environmental exposures and health outcomes, an appropriate spatiotemporal interpolation is critical. Traditional spatiotemporal interpolation methods either consider the spatial and temporal dimensions separately or incorporate both dimensions simultaneously by simply treating time as another dimension in space. Such interpolation results suffer from relatively low accuracy as the true space-time domain is skewed inappropriately and the distance calculation in such domain is not accurate. We employ the efficient k-d tree structure to store spatiotemporal data and adopt several machine learning methods to learn optimal parameters. To overcome the computational difficulty with large data sets, we implement our method on an efficient cluster computing framework – Apache Spark. Real world PM2.5 data sets are utilized to test our implementation and the experimental results demonstrate the computational power of our method, which significantly outperforms the previous work in terms of both speed and accuracy.
引用
收藏
页码:87 / 96
页数:9
相关论文
共 50 条
  • [21] Matrixized Learning Machine with Feature-Clustering Interpolation
    Zhu, Yujin
    Wang, Zhe
    Gao, Daqi
    NEURAL PROCESSING LETTERS, 2016, 44 (02) : 291 - 306
  • [22] Natural Image Interpolation Using Extreme Learning Machine
    Dubey, Aman
    Lohiya, Akshay
    Narwal, Vishwajeet
    Jha, Abhinash Kumar
    Agarwal, Punjal
    Schaefer, Gerald
    PROCEEDINGS OF THE EIGHTH INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND PATTERN RECOGNITION (SOCPAR 2016), 2018, 614 : 340 - 350
  • [23] A Hybrid Machine Learning and Kriging Approach for Rainfall Interpolation
    Astutik, Suci
    Astuti, Ani Budi
    Damayanti, Rismania Hartanti Putri Yulianing
    Syalsabila, Alya Fitri
    INTERNATIONAL JOURNAL OF MATHEMATICS AND COMPUTER SCIENCE, 2025, 20 (01): : 271 - 276
  • [24] Machine Learning in Interpolation and Extrapolation for Nanophotonic Inverse Design
    Acharige, Didulani
    Johlin, Eric
    ACS OMEGA, 2022, 7 (37): : 33537 - 33547
  • [25] Matrixized Learning Machine with Feature-Clustering Interpolation
    Yujin Zhu
    Zhe Wang
    Daqi Gao
    Neural Processing Letters, 2016, 44 : 291 - 306
  • [26] Machine learning proved efficient
    Jie Pan
    Nature Computational Science, 2022, 2 : 619 - 619
  • [27] A machine learning efficient frontier
    Clark, Brian
    Feinstein, Zachary
    Simaan, Majeed
    OPERATIONS RESEARCH LETTERS, 2020, 48 (05) : 630 - 634
  • [28] Machine learning for efficient handling
    Gabriel F.
    Bergers J.
    Aschersleben F.
    Dröder K.
    WT Werkstattstechnik, 2021, 111 (09): : 638 - 643
  • [29] Machine learning proved efficient
    Pan, Jie
    NATURE COMPUTATIONAL SCIENCE, 2022, 2 (10): : 619 - 619
  • [30] A Quantum Machine Learning Approach to Spatiotemporal Emission Modelling
    Zheng, Kelly
    Van Griensven, Jesse
    Fraser, Roydon
    ATMOSPHERE, 2023, 14 (06)