Akira TANIMOTO, Ph.D.
Hello, I’m Akira TANIMOTO. I’m a Research Scientist at NEC Corporation, and I specialize in machine learning.
Research Interest
- Modeling for Decision-Making
- Causal inference
- Reinforcement learning
- Sample-efficient ML
- Side information
- Transfer learning
- Real-World applications
- Marketing science: demand forecast and stock optimization, price optimization, and assortment optimization
- Social infrastructure: railway, satellites, and finance
Academic/professional career summary
[March 2012] B.S. in Department of Engineering, The University of Tokyo
[March 2014] M.S. in Graduate School of Engineering, The University of Tokyo
[April 2014-] Researcher at NEC Corp.
[October 2017-March 2022] Visiting Scientist at RIKEN AIP-NEC Collaboration Center
[September 2021] Ph.D. in Informatics, Kyoto University
Dissertation
- Akira Tanimoto, Goal-oriented modeling for data-driven decision making, Doctoral dissertation, Kyoto University, 2021.
Publications
Causal inference and application to recommendation:
- Akira Tanimoto, Tomoya Sakai, Takashi Takenouchi, Hisashi Kashima. Regret Minimization for Causal Inference on Large Treatment Space. International Conference on Artificial Intelligence and Statistics (AISTATS), 2021.
- Akira Tanimoto, Tomoya Sakai, Takashi Takenouchi, Hisashi Kashima. Causal Combinatorial Factorization Machines for Set-wise Recommendation. In Proceedings of the 25th Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD), 2021.
Privileged (side) information:
- Akira Tanimoto, So Yamada, Takashi Takenouchi, Masashi Sugiyama, Hisashi Kashima. Improving imbalanced classification using near-miss instances, Expert Systems with Applications, 2022.
- Shogo Hayashi, Akira Tanimoto, Hisashi Kashima, Long-Term Prediction of Small Time-Series Data Using Generalized Distillation, In Proceedings of the 2019 International Joint Conference on Neural Networks (IJCNN), 2019.
Reinforcement learning application:
- Akira Tanimoto, Combinatorial Q-Learning for Condition-Based Infrastructure Maintenance, in IEEE Access, vol. 9, pp. 46788-46799, 2021.
Please refer Japanese page for publications in Japanese.
Please also refer to Google scholar for more info.
Contact
a.tanimoto[at]nec.com
or my personal email