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2020 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 – 2022-03-31
Keywordslarge graph / Convex clustering / graph neural networks
Outline of Annual Research Achievements

This year, we are still working toward the main goal of learning sound models of graphs and their applications. We have found applications of graphs and sparse structured data in different situations. One is the case of sparse data in Bayesian streaming learning.

Current Status of Research Progress
Current Status of Research Progress

3: Progress in research has been slightly delayed.

Reason

We are still stuck at the main goal of learning sound models of graphs. However, recent advances in learning on graphs offered some hope. While it is difficult to prove the soundness of graph models, one can prove its value in extreme cases. We are planning on this direction, to prove the soundness of these models on semi-supervised learning with very few labelled training data and learning representations of nodes on graphs.

Strategy for Future Research Activity

We are still in search of the sound models of graphs as the main goal. Other than that, we will find applications of graph in different situations such as in convex clustering.

Causes of Carryover

Due to covid-19 pandemic, we could not use the research budget as planned.

  • Research Products

    (1 results)

All 2020

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

  • [Journal Article] Structured Learning in Biological Domain2020

    • Author(s)
      Nguyen Canh Hao
    • Journal Title

      Journal of Systems Science and Systems Engineering

      Volume: 29 Pages: 440~453

    • DOI

      10.1007/s11518-020-5461-5

    • Peer Reviewed / Int'l Joint Research

URL: 

Published: 2021-12-27  

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