• Title of article

    Parallel Incremental Mining of Regular-Frequent Patterns from WSNs Big Data

  • Author/Authors

    Rahmani-Boldaji ، Sadegh Sheikh Bahaei University , Bateni ، Mehdi University of Isfahan, Khansar Campus , Mortazavi Dehkordi ، Mahmood University Canada West

  • From page
    639
  • To page
    648
  • Abstract
    Efficient regular-frequent pattern mining from sensors-produced data has become a challenge. The large volume of data leads to prolonged runtime, thus delaying vital predictions and decision makings which need an immediate response. So, using big data platforms and parallel algorithms is an appropriate solution. Additionally, an incremental technique is more suitable to mine patterns from big data streams than static methods. This study presents an incremental parallel approach and compact tree structure for extracting regular-frequent patterns from the data of wireless sensor networks. Furthermore, fewer database scans have been performed in an effort to reduce the mining runtime. This study was performed on Intel 5-day and 10-day datasets with 6, 4, and 2 nodes clusters. The findings show the runtime was improved in all 3 cluster modes by 14, 18, and 34% for the 5-day dataset and by 22, 55, and 85% for the 10-day dataset, respectively.
  • Keywords
    Regular , frequent pattern , Big streaming data , Parallel algorithm , Incremental mining
  • Journal title
    Journal of Artificial Intelligence and Data Mining
  • Journal title
    Journal of Artificial Intelligence and Data Mining
  • Record number

    2754465