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2021 Fiscal Year Research-status Report

Machine Learning on Large Graphs

Research Project

Project/Area Number 18K11434
Research InstitutionKyoto University

Principal Investigator

NGUYEN Canh・Hao  京都大学, 化学研究所, 講師 (90626889)

Project Period (FY) 2018-04-01 – 2023-03-31
Keywordslarge graph / machine learning / graph neural networks
Outline of Annual Research Achievements

We continue to obtain results on applications of learning on graphs on different settings. One result is on graph-based feature extraction. After that, substructure weights are learnt in WWL-based kernel setting. This overcomes the problem of usual kernel construction method that component (such as substructures) weights cannot be learnt in kernels.

Current Status of Research Progress
Current Status of Research Progress

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

Reason

We are making reasonable progress on specific topics of the project.

Strategy for Future Research Activity

We plan to continue working on application of graph on learning problems on different domains: biological networks, chemical compounds and knowledge graphs.

Causes of Carryover

Due to covid-19 pandemic, the research expenses could not be used for this fiscal year.

  • Research Products

    (1 results)

All 2021

All Journal Article (1 results) (of which Int'l Joint Research: 1 results,  Peer Reviewed: 1 results)

  • [Journal Article] Learning subtree pattern importance for Weisfeiler-Lehman based graph kernels2021

    • Author(s)
      Nguyen Dai Hai、Nguyen Canh Hao、Mamitsuka Hiroshi
    • Journal Title

      Machine Learning

      Volume: 110 Pages: 1587-1607

    • DOI

      10.1007/s10994-021-05991-y

    • Peer Reviewed / Int'l Joint Research

URL: 

Published: 2022-12-28  

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