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Methods in Causal Inference. Part 3: Measurement Error and External Validity Threats

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Journal Evol Hum Sci
Specialty Biology
Date 2024 Nov 27
PMID 39600618
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Abstract

The human sciences should seek generalisations wherever possible. For ethical and scientific reasons, it is desirable to sample more broadly than 'Western, educated, industrialised, rich, and democratic' (WEIRD) societies. However, restricting the target population is sometimes necessary; for example, young children should not be recruited for studies on elderly care. Under which conditions is unrestricted sampling desirable or undesirable? Here, we use causal diagrams to clarify the structural features of measurement error bias and target population restriction bias (or 'selection restriction'), focusing on threats to valid causal inference that arise in comparative cultural research. We define any study exhibiting such biases, or confounding biases, as weird (wrongly estimated inferences owing to inappropriate restriction and distortion). We explain why statistical tests such as configural, metric and scalar invariance cannot address the structural biases of weird studies. Overall, we examine how the workflows for causal inference provide the necessary preflight checklists for ambitious, effective and safe comparative cultural research.

Citing Articles

Methods in causal inference. Part 4: confounding in experiments.

Bulbulia J Evol Hum Sci. 2024; 6:e43.

PMID: 39703944 PMC: 11658928. DOI: 10.1017/ehs.2024.34.

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