Saved in:
Bibliographic Details
Main Authors: Walger, Felix, Ejtehadi, Mehdi, Schmeink, Anke, Paez-Granados, Diego
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.06224
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910043657469952
author Walger, Felix
Ejtehadi, Mehdi
Schmeink, Anke
Paez-Granados, Diego
author_facet Walger, Felix
Ejtehadi, Mehdi
Schmeink, Anke
Paez-Granados, Diego
contents Wearable sensors with local data processing can detect health threats early, enhance documentation, and support personalized therapy. In the context of spinal cord injury (SCI), which involves risks such as pressure injuries and blood pressure instability, continuous monitoring can help mitigate these by enabling early deDtection and intervention. In this work, we present a novel distributed machine learning (DML) protocol for human activity recognition (HAR) from wearable sensor data based on gradient-boosted decision trees (XGBoost). The proposed architecture is inspired by Party-Adaptive XGBoost (PAX) while explicitly preserving key structural and optimization properties of standard XGBoost, including histogram-based split construction and tree-ensemble dynamics. First, we provide a theoretical analysis showing that, under appropriate data conditions and suitable hyperparameter selection, the proposed distributed protocol can converge to solutions equivalent to centralized XGBoost training. Second, the protocol is empirically evaluated on a representative wearable-sensor HAR dataset, reflecting the heterogeneity and data fragmentation typical of remote monitoring scenarios. Benchmarking against centralized XGBoost and IBM PAX demonstrates that the theoretical convergence properties are reflected in practice. The results indicate that the proposed approach can match centralized performance up to a gap under 1\% while retaining the structural advantages of XGBoost in distributed wearable-based HAR settings.
format Preprint
id arxiv_https___arxiv_org_abs_2603_06224
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle FedSCS-XGB -- Federated Server-centric surrogate XGBoost for continual health monitoring
Walger, Felix
Ejtehadi, Mehdi
Schmeink, Anke
Paez-Granados, Diego
Machine Learning
Wearable sensors with local data processing can detect health threats early, enhance documentation, and support personalized therapy. In the context of spinal cord injury (SCI), which involves risks such as pressure injuries and blood pressure instability, continuous monitoring can help mitigate these by enabling early deDtection and intervention. In this work, we present a novel distributed machine learning (DML) protocol for human activity recognition (HAR) from wearable sensor data based on gradient-boosted decision trees (XGBoost). The proposed architecture is inspired by Party-Adaptive XGBoost (PAX) while explicitly preserving key structural and optimization properties of standard XGBoost, including histogram-based split construction and tree-ensemble dynamics. First, we provide a theoretical analysis showing that, under appropriate data conditions and suitable hyperparameter selection, the proposed distributed protocol can converge to solutions equivalent to centralized XGBoost training. Second, the protocol is empirically evaluated on a representative wearable-sensor HAR dataset, reflecting the heterogeneity and data fragmentation typical of remote monitoring scenarios. Benchmarking against centralized XGBoost and IBM PAX demonstrates that the theoretical convergence properties are reflected in practice. The results indicate that the proposed approach can match centralized performance up to a gap under 1\% while retaining the structural advantages of XGBoost in distributed wearable-based HAR settings.
title FedSCS-XGB -- Federated Server-centric surrogate XGBoost for continual health monitoring
topic Machine Learning
url https://arxiv.org/abs/2603.06224