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方法族Process / pipelineProcess / pipeline
起源年份Mid-2000s (smartphone-era formalization ~2006–2010)1990s–2000s (accelerated with IoT and wearable devices from ~2010)
提出者Andrew Campbell, Tanzeem Choudhury, and colleagues (early smartphone sensing research); broader field of ubiquitous computingEmerging from ambulatory assessment and wearable technology research communities
类型Passive and active quantitative data collection techniqueLongitudinal quantitative/mixed data collection technique
开创性文献Lane, N. D., Miluzzo, E., Lu, H., Peebles, D., Choudhury, T., & Campbell, A. T. (2010). A survey of mobile phone sensing. IEEE Communications Magazine, 48(9), 140–150. DOI ↗Lanza, S. T., Collins, L. M., Lemmon, D. R., & Schafer, J. L. (2005). PROC LCA: A SAS procedure for latent class analysis. Structural Equation Modeling, 14(4), 671–694. [For longitudinal intensive repeated-measures designs context, see also: Shiffman, S., Stone, A. A., & Hufford, M. R. (2008). Ecological momentary assessment. Annual Review of Clinical Psychology, 4, 1–32.] link ↗
别名mobile sensing, smartphone sensor data collection, wearable sensor data collection, passive mobile data collectionlong-term sensor monitoring, longitudinal sensing, continuous sensor logging, repeated-measures sensor collection
相关43
摘要Mobile sensor data collection uses the built-in sensors of smartphones, tablets, or wearable devices to capture behavioral, physiological, and environmental data in real-world settings. Sensors such as accelerometers, GPS, heart rate monitors, ambient light detectors, and microphones record data passively or on demand, enabling researchers to study human behavior with high temporal resolution outside the laboratory.Longitudinal sensor data collection deploys physical or digital sensors to record phenomena continuously or at regular intervals across an extended study period — days, months, or years. Unlike one-shot measurement, the repeated temporal structure captures change, trajectory, and variability in outcomes such as physical activity, environmental exposure, sleep, or physiological state. The approach combines the ecological validity of real-world sensing with the analytical power of longitudinal design.
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ScholarGate方法对比: Mobile Sensor Data Collection · Longitudinal Sensor Data Collection. 于 2026-06-17 检索自 https://scholargate.app/zh/compare