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This software is being developed at the University of Aizu, Aizu-Wakamatsu, Fukushima, Japan

Project description

PyPI AppVeyor PyPI - Python Version GitHub all releases GitHub license PyPI - Implementation PyPI - Wheel PyPI - Status GitHub issues GitHub forks GitHub stars

Introduction

PAMI stands for PAttern MIning. It constitutes several pattern mining algorithms to discover interesting patterns in transactional/temporal/spatiotemporal databases. This software is provided under GNU GENERAL PUBLIC LICENSE Version 3, 29 June 2007.

  1. The user manual for PAMI library is available at https://udayrage.github.io/PAMI/index.html
  2. Datasets to implement PAMI algorithms are available at https://www.u-aizu.ac.jp/~udayrage/software.html
  3. Please report issues in the software at https://github.com/udayRage/PAMI/issues

Installation

   pip install pami

Upgrade

   pip install --upgrade pami

Details

Total available algorithms: 43

  1. Frequent pattern mining:

    Basic Closed Maximal Top-k
    Apriori Closed maxFP-growth topK
    FP-growth
    ECLAT
    ECLAT-bitSet
  2. Frequent pattern mining using other measures:

    Basic
    RSFP
  3. Correlated pattern mining:

    Basic
    CP-growth
    CP-growth++
  4. Frequent spatial pattern mining:

    Basic
    spatialECLAT
    FSP-growth ?
  5. Correlated spatial pattern mining:

    Basic
    SCP-growth
  6. Fuzzy correlated pattern mining:

    Basic
    CFFI
  7. Fuzzy frequent spatial pattern mining:

    Basic
    FFSI
  8. Fuzzy periodic frequent pattern mining:

    Basic
    FPFP-Miner
  9. High utility frequent spatial pattern mining:

    Basic
    HDSHUIM
  10. High utility pattern mining:

    Basic
    EFIM
    UPGrowth
  11. Partial periodic frequent pattern:

    Basic
    GPF-growth
    PPF-DFS
  12. Periodic frequent pattern mining:

    Basic Closed Maximal
    PFP-growth CPFP maxPF-growth
    PFP-growth++
    PS-growth
    PFP-ECLAT
  13. Partial periodic pattern mining:

    Basic Maximal
    3P-growth max3P-growth
    3PECLAT
  14. Uncertain correlated pattern mining:

    Basic
    CFFI
  15. Uncertain frequent pattern mining:

    Basic
    PUF
    TubeP
    TubeS
  16. Uncertain periodic frequent pattern mining:

    Basic
    PTubeP
    PTubeS
    UPFP-growth
  17. Local periodic pattern mining:

    Basic
    LPPMbredth
    LPPMdepth
    LPPGrowth
  18. Recurring pattern mining:

    Basic
    RPgrowth

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