AISep 26, 2024

CRoP: Context-wise Robust Static Human-Sensing Personalization

arXiv:2409.17994v51 citationsh-index: 9
Originality Incremental advance
AI Analysis

This work addresses the problem of limited data and distribution shifts in clinical human-sensing applications, offering a practical solution for improving model generalizability, though it is incremental in personalization methods.

The paper tackles the challenge of intra-user heterogeneity in human sensing by introducing CRoP, a static personalization approach that adapts pre-trained models through pruning, achieving superior personalization effectiveness and intra-user robustness across four datasets, including real-world health domains.

The advancement in deep learning and internet-of-things have led to diverse human sensing applications. However, distinct patterns in human sensing, influenced by various factors or contexts, challenge the generic neural network model's performance due to natural distribution shifts. To address this, personalization tailors models to individual users. Yet most personalization studies overlook intra-user heterogeneity across contexts in sensory data, limiting intra-user generalizability. This limitation is especially critical in clinical applications, where limited data availability hampers both generalizability and personalization. Notably, intra-user sensing attributes are expected to change due to external factors such as treatment progression, further complicating the challenges. To address the intra-user generalization challenge, this work introduces CRoP, a novel static personalization approach. CRoP leverages off-the-shelf pre-trained models as generic starting points and captures user-specific traits through adaptive pruning on a minimal sub-network while allowing generic knowledge to be incorporated in remaining parameters. CRoP demonstrates superior personalization effectiveness and intra-user robustness across four human-sensing datasets, including two from real-world health domains, underscoring its practical and social impact. Additionally, to support CRoP's generalization ability and design choices, we provide empirical justification through gradient inner product analysis, ablation studies, and comparisons against state-of-the-art baselines.

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