Koh Takeuchi

Projects “presto - sakigake”

News
2022.04.07

Spatio-temporal Causal Modeling for Reliable Decision-Making

Spatio-temporal Causal Modeling for Reliable Decision-Making

Machine learning and data mining, a field of artificial intelligence research, have dramatically improved performance in the tasks of knowledge discovery and prediction by adopting big data and deep learning methods. The spatio-temporal data analysis, which is a technology for processing big data acquired by IoT/5G, has become a major technological topic in artificial intelligence for decision-making in world society.

If AI provides accurate predictions, working with AI is expected to contribute to decision-making and consensus building process. On the other hand, if the analysis results are inaccurate, there is a risk of misdirected decision-making, and problems are expected to occur in society in the future. In this project, we are focusing on spatio-temporal bias of data, which is the cause of inaccurate AI analysis results, and attempt to develop novel spatio-temporal causal inference models to realize robust and reliable analysis against this problem.


News

A Paper Accepted fo EAAI2022.
Naoki Miyaguchi, Koh Takeuchi, Hisashi Kashima, Mizuki Morita, Hiroshi Morimatsu.Predicting Anesthetic Infusion Events Using Machine Learning.Scientific Reports, 2022.
A Paper Accepted fo Scientific Reports.
Naoki Miyaguchi, Koh Takeuchi, Hisashi Kashima, Mizuki Morita, Hiroshi Morimatsu.Predicting Anesthetic Infusion Events Using Machine Learning.Scientific Reports, 2022.
We received JSAI Annual Conference Award 2021.
Koh Takeuchi, Ryo Nishida, Hisashi Kashima, Masaki Onishi, JSAI 2021

Get In Touch

Address
204, Research Bldg. No.7, Kyoto University, Yoshida-honmachi, Sakyo-ku, Kyoto, 606-8501.
E-mail
takeuchi<a.t.>i.kyoto-u.ac.jp
国立大学法人京都大学
鹿島・竹内研究室
国立研究開発法人科学技術振興機構(JST) 戦略的創造研究推進事業 さきがけ(Precursory Research for Embryonic Science and Technology)