Abstract
Experience Sampling Methodology (ESM) has been widely used over the past decades to study feelings, behaviour and thoughts as they occur in daily life. Typically, participants complete several assessments per day via a smartphone for multiple days. The growing adoption of ESM has spurred a number of methodological advancements. In this paper, we provide an overview of recent developments in ESM design, statistical analysis and implementation. In terms of design, we discuss considerations around what to measure—including the reliability and validity of self-report measures as well as mobile sensing—as well as when to measure, where we focus on the pros and cons of burst designs and advances in sample size planning methodology. Regarding statistical analysis, we highlight non-linear models, survival analysis for understanding time-to-event data and real-time monitoring of ESM time series. At the implementation level, we address open science practices and advances in data preprocessing. Although most of affect in daily life.
Original language | English |
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Number of pages | 20 |
Journal | British Journal of Mathematical and Statistical Psychology |
DOIs | |
Publication status | E-pub ahead of print - 10 Jun 2025 |
Keywords
- experience sampling methodology
- measurement
- mobile sensing
- nonlinear mode
- open science
- reliability
- sample size planning
- statistical process control
- survival analysis
- time series analysis
- validity