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arxiv: 2312.02300 · v1 · pith:2C45EFUM · submitted 2023-12-04 · cs.LG · eess.SP

Reconsideration on evaluation of machine learning models in continuous monitoring using wearables

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classification cs.LG eess.SP
keywords continuousevaluationmonitoringhealthlearningmachinemodelsbeyond
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This paper explores the challenges in evaluating machine learning (ML) models for continuous health monitoring using wearable devices beyond conventional metrics. We state the complexities posed by real-world variability, disease dynamics, user-specific characteristics, and the prevalence of false notifications, necessitating novel evaluation strategies. Drawing insights from large-scale heart studies, the paper offers a comprehensive guideline for robust ML model evaluation on continuous health monitoring.

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