- Title
Active Sampling: A Machine-Learning-Assisted Framework for Finite Population Inference with Optimal Subsamples.
- Authors
Imberg, Henrik; Yang, Xiaomi; Flannagan, Carol; Bärgman, Jonas
- Abstract
Data subsampling has become widely recognized as a tool to overcome computational and economic bottlenecks in analyzing massive datasets. We contribute to the development of adaptive design for estimation of finite population characteristics, using active learning and adaptive importance sampling. We propose an active sampling strategy that iterates between estimation and data collection with optimal subsamples, guided by machine learning predictions on yet unseen data. The method is illustrated on virtual simulation-based safety assessment of advanced driver assistance systems. Substantial performance improvements are demonstrated compared to traditional sampling methods.
- Subjects
DRIVER assistance systems; TRAFFIC safety; COMPUTER simulation; ACQUISITION of data; SAMPLING methods
- Publication
Technometrics, 2025, Vol 67, Issue 1, p46
- ISSN
0040-1706
- Publication type
Academic Journal
- DOI
10.1080/00401706.2024.2374554