A distributed memory architecture implementation of the False Nearest Neighbors method based on distribution of dimensions

被引:0
|
作者
I. Marín Carrión
E. Arias Antúnez
M. M. Artigao Castillo
J. J. Miralles Canals
机构
[1] University of Castilla-La Mancha,Applied Physics Dept.
[2] University of Castilla-La Mancha,Computer System Dept.
来源
The Journal of Supercomputing | 2012年 / 59卷
关键词
Parallel computing; Message passing interface; Physics; Nonlinear time series analysis; False nearest neighbors method;
D O I
暂无
中图分类号
学科分类号
摘要
The False Nearest Neighbors (FNN) method is particularly relevant in several fields of science and engineering (medicine, economics, oceanography, biological systems, etc.). In some of these applications, it is important to give results within a reasonable time scale, so the execution time of the FNN method has to be reduced. This paper describes two parallel implementations of the FNN method based on the distribution of embedding dimensions for distributed memory architectures. A “Single-Program, Multiple Data” (SPMD) paradigm is employed using a simple data decomposition approach where each processor runs the same program but acts on a different subset of the data. The computationally intensive part of the method lies mainly in the neighbor search and this task is therefore parallelized and executed using 4 to 64 processors. The accuracy and performance of the two parallel approaches are then assessed and compared to the best sequential implementation of the FNN method which appears in the TISEAN project. The results indicate that the two parallel approaches, when the method is run using 64 processors on the MareNostrum supercomputer, are between 17 and 37 times faster than the sequential one. Efficiency is between 26% and 59%.
引用
收藏
页码:1596 / 1618
页数:22
相关论文
共 50 条
  • [41] A robust method based on locality sensitive hashing for K-nearest neighbors searching
    Cheng, Dongdong
    Huang, Jinlong
    Zhang, Sulan
    Wu, Quanwang
    WIRELESS NETWORKS, 2024, 30 (05) : 4195 - 4208
  • [42] Triku: a feature selection method based on nearest neighbors for single-cell data
    Ascension, Alex M.
    Ibanez-Sole, Olga
    Inza, Inaki
    Izeta, Ander
    Arauzo-Bravo, Marcos J.
    GIGASCIENCE, 2022, 11
  • [43] Top K representative: a method to select representative samples based on K nearest neighbors
    Yang, Kai
    Cai, Yi
    Cai, Zhiwei
    Xie, Haoran
    Wong, Tak-Lam
    Chan, Wai Hong
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2019, 10 (08) : 2119 - 2129
  • [44] Application and implementation of distributed web architecture based on MIDAS
    College of Information Science and Engineering, Wuhan University of Science and technology, Wuhan 430081, China
    不详
    Wuhan Ligong Daxue Xuebao (Jiaotong Kexue Yu Gongcheng Ban), 2006, 4 (629-632):
  • [45] A grid resource discovery method based on adaptive k-nearest neighbors clustering
    Zhang, Yan
    Jia, Yan
    Huang, Xiaobin
    Zhou, Bin
    Gu, Jian
    COMBINATORIAL OPTIMIZATION AND APPLICATIONS, PROCEEDINGS, 2007, 4616 : 171 - +
  • [46] RSSI-based Hybrid Centroid-K-Nearest Neighbors localization method
    Achour Achroufene
    Telecommunication Systems, 2023, 82 : 101 - 114
  • [47] A link prediction method based on topological nearest-neighbors similarity in directed networks
    Guo, Feipeng
    Zhou, Wei
    Wang, Zifan
    Ju, Chunhua
    Ji, Shaobo
    Lu, Qibei
    JOURNAL OF COMPUTATIONAL SCIENCE, 2023, 69
  • [48] Triku: a feature selection method based on nearest neighbors for single-cell data
    Ascension, Alex M.
    Ibanez-Sole, Olga
    Inza, Inaki
    Izeta, Ander
    Arauzo-Bravo, Marcos J.
    GIGASCIENCE, 2022, 11
  • [49] An improved method for coherent structure identification based on mutual K-nearest neighbors
    Wei, Zeming
    Zhang, Jiazhong
    Jia, Ruidong
    Gao, Jingsheng
    JOURNAL OF TURBULENCE, 2022, 23 (11-12): : 655 - 673
  • [50] RSSI-based Hybrid Centroid-K-Nearest Neighbors localization method
    Achroufene, Achour
    TELECOMMUNICATION SYSTEMS, 2023, 82 (01) : 101 - 114