Abstract
Psychologists tend to rely on verbal descriptions of the environment over time, using terms like “unpredictable,” “variable,” and “unstable.” These terms are often open to different interpretations. This ambiguity blurs the match between constructs and measures, which creates confusion and inconsistency across studies. To better characterize the environment, the field needs a shared framework that organizes descriptions of the environment over time in clear terms: as statistical definitions. Here, we first present such a framework, drawing on theory developed in other disciplines, such as biology, anthropology, ecology, and economics. Then we apply our framework by quantifying “unpredictability” in a publicly available, longitudinal data set of crime rates in New York City (NYC) across 15 years. This case study shows that the correlations between different “unpredictability statistics” across regions are only moderate. This means that regions within NYC rank differently on unpredictability depending on which definition is used and at which spatial scale the statistics are computed. Additionally, we explore associations between unpredictability statistics and measures of unemployment, poverty, and educational attainment derived from publicly available NYC survey data. In our case study, these measures are associated with mean levels in crime rates but hardly with unpredictability in crime rates. Our case study illustrates the merits of using a formal framework for disentangling different properties of the environment. To facilitate the use of our framework, we provide a friendly, step-by-step guide for identifying the structure of the environment in repeated measures data sets.
Original language | English |
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Number of pages | 18 |
Journal | Psychological Methods |
DOIs | |
Publication status | E-pub ahead of print - 1 Sept 2024 |
Bibliographical note
Publisher Copyright:© 2024 The Author(s)
Funding
Willem E. Frankenhuis' contributions have been supported by the Dutch Research Council (V1.Vidi.195.130) and the James S. McDonnell Foundation (https://doi.org/10.37717/220020502). We thank Sinead English, Marc Mangel, Meriah De Joseph, Karen Smith, and Judith Dubas for helpful feedback on an earlier draft.
Funders | Funder number |
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Dutch Research Council | V1.Vidi.195.130 |
James S. McDonnell Foundation |
Keywords
- development
- environmental statistics
- theory
- time-series analysis
- unpredictability