Towards Human-Compatible AI for Well-being by Integrating Physiological Viewpoint With Machine Learning Viewpoint

Authors

  • Keiki Takadama The University of Tokyo
  • Daiki Shintani The University of Electro-Communications

DOI:

https://doi.org/10.1609/aaaiss.v5i1.35598

Abstract

This paper focuses on “human-compatible AI” which aligns with human values and remains under human control to pre-vent unintended and harmful consequences, and discusses it to develop human-compatible AI for well-being. For this is-sue, this paper proposes the human-compatible AI for a sleep as one of the human-compatible AI for well-being, which is designed to have the functions of (1) checking how the esti-mated sleep stage (corresponding to suggestions to users) fol-lows the biological rhythms which determine their health conditions (corresponding to human values) and (2) modify-ing the estimated sleep stage according to their biological rhythms. To investigate an importance of the proposed ap-proach, this paper applies it into the sleep stage estimation based on the acceleration sensor data. Through the human subject experiment, the following implications have been re-vealed: (1) it is dangerous to simply employ machine learning (i.e., Random Forest in this research) for the sleep stage esti-mation because the sleep stage is artificially estimated without following the ultradian rhythm which are generally found in humans; and (2) it is important to integrate the physiological characteristic (i.e., the ultradian rhythm) with machine learning for the sleep stage estimation because such an inte-gration can estimate the sleep stage that follow the ultradian rhythm.

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Published

2025-05-28

How to Cite

Takadama, K., & Shintani, D. (2025). Towards Human-Compatible AI for Well-being by Integrating Physiological Viewpoint With Machine Learning Viewpoint. Proceedings of the AAAI Symposium Series, 5(1), 272–277. https://doi.org/10.1609/aaaiss.v5i1.35598

Issue

Section

Human-Compatible AI for Well-being (Full Papers)