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Calibration and validation of accelerometer-based activity monitors: A systematic review of machine-learning approaches

机译:基于加速度计的活动监视器的校准和验证:对机器学习方法的系统综述

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Background: Objective measures using accelerometer-based activity monitors have been extensively used in physical activity (PA) and sedentary behavior (SB) research. To measure PA and SB precisely, the field is shifting towards machine learning-based (ML) approaches for calibration and validation of accelerometer-based activity monitors. Nevertheless, various parameters regarding the use and development of ML-based models, including data type (raw acceleration data versus activity counts), sampling frequency, window size, input features, ML technique, accelerometer placement, and free-living settings, affect the predictive ability of ML-based models. The effects of these parameters on ML-based models have remained elusive, and will be systematically reviewed here. The open challenges were identified and recommendations are made for future studies and directions.
机译:背景:使用基于加速度计的活动监视器的客观措施已广泛用于物理活动(PA)和久坐行为(SB)研究。 为了精确测量PA和SB,该领域正在转向基于机器学习的(ML)方法,用于校准和验证加速度计的活动监视器。 尽管如此,关于基于ML的模型的使用和开发的各种参数,包括数据类型(原始加速度数据与活动计数),采样频率,窗口大小,输入功能,ML技术,加速度计放置和自由生活设置,影响 基于ML的模型的预测能力。 这些参数对ML的模型对基于ML的影响仍然难以捉摸,并且将在此处进行系统地审查。 确定了开放挑战,并为未来的研究和方向提出建议。

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