HyPockeTuner: Bringing Hyperparameter Optimization to Mobile Devices
  • Hong, Donghee
  • Lee, Bongshin
  • Seo, Jinwook
  • Jo, Jaemin
Citations

SCOPUS

0

초록

Hyperparameter optimization (HPO) is a long-running process that can span hours or even days. While recent Human-in-the-Loop HPO systems enable monitoring and steering of the process, they are typically designed for desktop environments, which limits their effectiveness in managing prolonged experiments in practice. To address these limitations, we present HyPockeTuner, an interactive mobile system that enables users to monitor, steer, and reflect on HPO experiments anytime, anywhere from smartphones. Its mobile-tailored interface supports tracking experiment history and visualizing the relationship between user interventions and performance changes. HyPockeTuner also employs a notification workflow that alerts users to important events, reducing the burden of constant monitoring while enabling timely interventions. In a pilot study, we validated that users could readily identify critical events, such as performance improvements and intervention points, through our visualization. Furthermore, two five-day deployment studies with follow-up reflection sessions demonstrated that users could integrate experiment management into their daily routines and reflect on past decisions, generating insights for future improvement.

키워드

Automated Machine LearningData VisualizationHyperparameter OptimizationMobile Data VisualizationSmartphones
제목
HyPockeTuner: Bringing Hyperparameter Optimization to Mobile Devices
저자
Hong, DongheeLee, BongshinSeo, JinwookJo, Jaemin
DOI
10.1145/3772318.3790977
발행일
2026
유형
Conference Paper
저널명
Conference on Human Factors in Computing Systems - Proceedings