Multiverse analysis for dynamic network models: Investigating the influence of plausible alternative modeling choices [Author Accepted Manuscript]
Author(s) / Creator(s)
Siepe, Björn S.
Heck, Daniel W.
Abstract / Description
Specifying complex time series models typically allows for a wide range of plausible analysis strategies. However, researchers typically perform and report only a single, preferred analysis while ignoring alternatives that could yield different conclusions. As a remedy, we propose multiverse analysis to investigate the robustness of dynamic network analysis to arbitrary modeling choices. We focus on group iterative multiple model estimation (GIMME), a highly data-driven approach, and re-analyze two datasets (combined n=199). We vary seven modeling parameters, resulting in 3,888 fitted models. Group-level and, to a lesser extent, subgroup-level results were mostly stable. Individual-level estimates were more heterogeneous, with some decisions strongly influencing results and conclusions. The robustness of GIMME to alternative modeling choices depends on the level of analysis. For some individuals, results may differ strongly even when changing the algorithm only slightly. Multiverse analysis is a valuable tool for checking the robustness of results from time series models.
Keyword(s)
Time Series Network Analysis Multiverse Heterogeneity GIMMEPersistent Identifier
Date of first publication
2025-03-10
Journal title
Methodology
Publisher
PsychArchives
Publication status
acceptedVersion
Review status
reviewed
Is version of
Citation
Siepe, B. S., & Heck, D. W. (in press). Multiverse analysis for dynamic network models: Investigating the influence of plausible alternative modeling choices [Author Accepted Manuscript]. Methodology.
https://doi.org/10.23668/psycharchives.16168
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Siepe_Heck_2025_Multiverse_analysis_for_dynamic_network_models_Meth_AAM.pdfAdobe PDF - 862.22KBMD5: f1596888b1bc87342f2e3068eff0daaaDescription: Accepted Manuscript
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There are no other versions of this object.
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Author(s) / Creator(s)Siepe, Björn S.
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Author(s) / Creator(s)Heck, Daniel W.
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PsychArchives acquisition timestamp2025-03-10T16:33:33Z
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Made available on2025-03-10T16:33:33Z
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Date of first publication2025-03-10
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Abstract / DescriptionSpecifying complex time series models typically allows for a wide range of plausible analysis strategies. However, researchers typically perform and report only a single, preferred analysis while ignoring alternatives that could yield different conclusions. As a remedy, we propose multiverse analysis to investigate the robustness of dynamic network analysis to arbitrary modeling choices. We focus on group iterative multiple model estimation (GIMME), a highly data-driven approach, and re-analyze two datasets (combined n=199). We vary seven modeling parameters, resulting in 3,888 fitted models. Group-level and, to a lesser extent, subgroup-level results were mostly stable. Individual-level estimates were more heterogeneous, with some decisions strongly influencing results and conclusions. The robustness of GIMME to alternative modeling choices depends on the level of analysis. For some individuals, results may differ strongly even when changing the algorithm only slightly. Multiverse analysis is a valuable tool for checking the robustness of results from time series models.en
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Publication statusacceptedVersion
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Review statusreviewed
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CitationSiepe, B. S., & Heck, D. W. (in press). Multiverse analysis for dynamic network models: Investigating the influence of plausible alternative modeling choices [Author Accepted Manuscript]. Methodology. https://doi.org/10.23668/psycharchives.16168
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ISSN1614-2241
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Persistent Identifierhttps://hdl.handle.net/20.500.12034/11582
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Persistent Identifierhttps://doi.org/10.23668/psycharchives.16168
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Language of contenteng
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PublisherPsychArchives
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Is version ofhttps://doi.org/10.5964/meth.15665
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Is version ofhttps://doi.org/10.31219/osf.io/etm3u
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Is related tohttps://osf.io/ahcx5/
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Is related tohttps://osf.io/xvrz5/
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Keyword(s)Time Series
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Keyword(s)Network Analysis
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Keyword(s)Multiverse
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Keyword(s)Heterogeneity
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Keyword(s)GIMME
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Dewey Decimal Classification number(s)150
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TitleMultiverse analysis for dynamic network models: Investigating the influence of plausible alternative modeling choices [Author Accepted Manuscript]en
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DRO typearticle
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Journal titleMethodology
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Visible tag(s)PsychOpen GOLD
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Visible tag(s)Accepted Manuscript