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2023 Fiscal Year Research-status Report

Advanced deep graph neural networks for explainable anomaly detection study

Research Project

Project/Area Number 22K17961
Research InstitutionNational Institute of Informatics

Principal Investigator

Ouyang Tinghui  国立情報学研究所, 情報社会相関研究系, 特任研究員 (80870849)

Project Period (FY) 2022-04-01 – 2025-03-31
KeywordsAnomaly detection / Out-of-distribution / data structure / explaination
Outline of Annual Research Achievements

In terms of explanation of anomaly detection, we proposed granule-based anomalous data descriptor and detector for explanation. Moreover, we developed a structure matrix which is useful to realize data structure contraction and helpful to explain that anomaly data usually have large distance in the process of data structure contraction. In terms of anomaly detection applications, we apply the proposed granular AD detector to detect the out-of-distribution data in image and textual data. Moreover, a data quality assurance issue is discussed based on GPT-based sentiment analysis application.

Current Status of Research Progress
Current Status of Research Progress

2: Research has progressed on the whole more than it was originally planned.

Reason

According to the proposal, our current progress is going as expected without delays. There are totally four conference papers and one journal submitted, among which two have been published in this fiscal year. In the next step, we will develop more anomaly detection algorithms and applications based on granular structure and granular information graph.

Strategy for Future Research Activity

According to the plan in the proposal, we will do more research on developing advanced anomaly data detection algorithms and applications. One is to construct granular information graph, to develop GNN for anomaly detection, and to provide explanation. Then, we will continue solving various practical problems and applications related to anomaly data detection, and provide explanation for the AD process.

Causes of Carryover

In this fiscal year, the funding would be used for the support of some international conferences and paper editing and publication cost.

  • Research Products

    (2 results)

All 2023

All Presentation (2 results) (of which Int'l Joint Research: 2 results)

  • [Presentation] Quality assurance of a gpt-based sentiment analysis system: Adversarial review data generation and detection2023

    • Author(s)
      T Ouyang, HQ Nguyen-Son, HH Nguyen, I Echizen, Y Seo
    • Organizer
      2023 30th Asia-Pacific Software Engineering Conference (APSEC),
    • Int'l Joint Research
  • [Presentation] A Novel Statistical Measure for Out-of-Distribution Detection in Data Quality Assurance2023

    • Author(s)
      T Ouyang, I Echizen, Y Seo
    • Organizer
      2023 30th Asia-Pacific Software Engineering Conference (APSEC),
    • Int'l Joint Research

URL: 

Published: 2024-12-25  

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