English

LSM-2: Learning from Incomplete Wearable Sensor Data

Machine Learning 2025-06-06 v1

Abstract

Foundation models, a cornerstone of recent advancements in machine learning, have predominantly thrived on complete and well-structured data. Wearable sensor data frequently suffers from significant missingness, posing a substantial challenge for self-supervised learning (SSL) models that typically assume complete data inputs. This paper introduces the second generation of Large Sensor Model (LSM-2) with Adaptive and Inherited Masking (AIM), a novel SSL approach that learns robust representations directly from incomplete data without requiring explicit imputation. AIM's core novelty lies in its use of learnable mask tokens to model both existing ("inherited") and artificially introduced missingness, enabling it to robustly handle fragmented real-world data during inference. Pre-trained on an extensive dataset of 40M hours of day-long multimodal sensor data, our LSM-2 with AIM achieves the best performance across a diverse range of tasks, including classification, regression and generative modeling. Furthermore, LSM-2 with AIM exhibits superior scaling performance, and critically, maintains high performance even under targeted missingness scenarios, reflecting clinically coherent patterns, such as the diagnostic value of nighttime biosignals for hypertension prediction. This makes AIM a more reliable choice for real-world wearable data applications.

Keywords

Cite

@article{arxiv.2506.05321,
  title  = {LSM-2: Learning from Incomplete Wearable Sensor Data},
  author = {Maxwell A. Xu and Girish Narayanswamy and Kumar Ayush and Dimitris Spathis and Shun Liao and Shyam A. Tailor and Ahmed Metwally and A. Ali Heydari and Yuwei Zhang and Jake Garrison and Samy Abdel-Ghaffar and Xuhai Xu and Ken Gu and Jacob Sunshine and Ming-Zher Poh and Yun Liu and Tim Althoff and Shrikanth Narayanan and Pushmeet Kohli and Mark Malhotra and Shwetak Patel and Yuzhe Yang and James M. Rehg and Xin Liu and Daniel McDuff},
  journal= {arXiv preprint arXiv:2506.05321},
  year   = {2025}
}

Comments

Xu and Narayanswamy are co-first authors. McDuff and Liu are co-last authors

R2 v1 2026-07-01T03:02:05.658Z