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2021 Fiscal Year Research-status Report

Exploring Novel Mathematical Models and Efficient Algorithms to Discover Periodic Spatial Patterns in Irregular Spatiotemporal Big Data

Research Project

Project/Area Number 21K12034
Research InstitutionThe University of Aizu

Principal Investigator

Rage Uday・Kiran  会津大学, コンピュータ理工学部, 准教授 (20874324)

Co-Investigator(Kenkyū-buntansha) 是津 耕司  国立研究開発法人情報通信研究機構, ユニバーサルコミュニケーション研究所統合ビッグデータ研究センター, 研究センター長 (40415857)
Project Period (FY) 2021-04-01 – 2025-03-31
KeywordsBig data
Outline of Annual Research Achievements

This year, we have first developed an ER-model to store the air pollution data. Next, we have developed a theoritical database model by applying normal forms. Later, we have populated our theoritical model using postGres database. The air pollution data used for populating our model has been taken from the Atmospheric Environmental Regional Observation System (http://soramame.taiki.go.jp/). Next, proposed a mathetical model for representing the air pollution data as a geo-referenced time series database. The work is going to appear in IEEE FUZZ 2022.

Current Status of Research Progress
Current Status of Research Progress

1: Research has progressed more than it was originally planned.

Reason

The reason is progressing smoothly. We were able to collect the data from the real-world.

Strategy for Future Research Activity

The space of items in a database gives raise to an itemset lattice. This lattice represents the search space for finding interesting patterns within the data. Thus, the size of the search space is (2 power n)-1, where n represents the total number of items in a database. In this research, we plan to explore novel pruning techniques to effectively reduce the search space. In particular, we plan to investigate upper bound measures to reduce the search space.

Causes of Carryover

We have transferred the balance to the Co-PI of this project, Koji Zettsu

  • Research Products

    (3 results)

All 2022 2021

All Journal Article (2 results) Book (1 results)

  • [Journal Article] Efficient Discovery of Partial Periodic Patterns in Large Temporal Databases2022

    • Author(s)
      Kiran Rage Uday、Veena Pamalla、Ravikumar Penugonda、Saideep Chennupati、Zettsu Koji、Shang Haichuan、Toyoda Masashi、Kitsuregawa Masaru、Reddy P. Krishna
    • Journal Title

      Electronics

      Volume: 11 Pages: 1523~1523

    • DOI

      10.3390/electronics11101523

  • [Journal Article] Efficient Discovery of Periodic-Frequent Patterns in Columnar Temporal Databases2021

    • Author(s)
      Ravikumar Penugonda、Likhitha Palla、Raj Bathala Venus Vikranth、Kiran Rage Uday、Watanobe Yutaka、Zettsu Koji
    • Journal Title

      Electronics

      Volume: 10 Pages: 1478~1478

    • DOI

      10.3390/electronics10121478

  • [Book] Periodic Pattern Mining Theory, Algorithms, and Applications2021

    • Author(s)
      Rage Uday Kiran, Philippe Fournier-Viger, Jose Maria Luna, Jerry Chun-Wei Lin, Anirban Mondal
    • Total Pages
      263
    • Publisher
      Springer
    • ISBN
      978-981-16-3963-0

URL: 

Published: 2022-12-28  

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