Mathematical Informatics
Research Staff
-
Professor
Kazushi IKEDA -
Affiliate Professor
Junichiro YOSHIMOTO -
Affiliate Professor
Toshitaka YAMAKAWA -
Associate Professor
Takatomi KUBO -
Affiliate Associate Professor
Tomoya TAMEI -
Assistant Professor
Yuzhe LI -
Assistant Professor
Chie HIEIDA -
Assistant Professor
Renzo Roel Perez TAN
Research Areas
Fig.1 Mathematical models in computation
Fig.2 Mathematical models in science
Fig.3 Mathematical models in engineering
We study mathematical models for life sciences, from cell biology and neuroscience to medical science and social interaction. Our interdisciplinary research covers computation (machine learning), science (mathematical biology) and engineering (signal processing).
Machine learning
- Statistical learning theory
- Statistical signal processing based on Bayes theory
- Neural network theory
- Information geometry and information theory
- Factor analysis and sparse models
- Reinforcement learning theory and applications
Mathematical biology
- Math models for cell biology
- Modeling and medical decision support for neuropsychiatric discorders
- Neural mechanism of empathy
- Behavior analysis using smart sensors
- Cognitive interaction design and social interaction
Signal processing
- Advanced driver assistance systems
- Adaptive signal processing theory and application
- Non-invasive human-machine interfaces
- Anomaly diagnosis by big-data analysis
- Deep learning methods and application
Key Features
Mathematical informatics is interdisciplinary; faculty and students in our lab have a variety of backgrounds, such as mathematical engineering, electric and electronic engineering, mechano-informatics, statistical science, physics, psychology, social science and medical science. We welcome students from any background since "mathematical models are everywhere", as long as they are interested in mathematical models.