2020
DOI: 10.31235/osf.io/ba67n
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What is Your Estimand? Defining the Target Quantity Connects Statistical Evidence to Theory

Abstract: The link between theory and quantitative empirical evidence is a longstanding hurdle in sociological research. Ambiguity about the role that statistical evidence plays in an argument may produce misleading conclusions and poor methodological practice. This ambiguity could be reduced if researchers would state the theoretical estimand---the central quantity at the core of a given paper---in precise language. Our approach envisions three choices in the research process: (1) choice of a theoretical estimand, whi… Show more

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Cited by 36 publications
(31 citation statements)
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References 62 publications
(80 reference statements)
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“…The two choices we raise-distributional summary and functional form-are applicable in any regression context. Researchers often equate the research goal with the coefficient of a regression model, but we advocate a more conscious choice of estimand (Lundberg, Johnson, and Stewart 2020). Research constrained to the study of parameterized means risks obscuring important sources of evidence.…”
Section: Resultsmentioning
confidence: 99%
“…The two choices we raise-distributional summary and functional form-are applicable in any regression context. Researchers often equate the research goal with the coefficient of a regression model, but we advocate a more conscious choice of estimand (Lundberg, Johnson, and Stewart 2020). Research constrained to the study of parameterized means risks obscuring important sources of evidence.…”
Section: Resultsmentioning
confidence: 99%
“…The focus onβ arises from an interest in mapping the (often causal) relationships between variables. Broadly speaking, machine learning can be helpful in this area as well-particularly if we abandon the idea that the relationship between two variables needs to be represented by a single parameter in a linear model (Lundberg et al 2021)-but it requires refocusing on the specific tasks relevant to social science.…”
Section: The Culture Of Machine Learningmentioning
confidence: 99%
“…Without any actual group differences in aggressiveness, this means that --conditional on police exposure --Black individuals involved in such situations are less aggressive, which would decrease their chances of being fatally shot. Such induced confounding could hide decision-maker bias and has been discussed at great length (see Hu, 2021;and Lundberg et al, 2020 for summaries of the debate); it crops up for other topics as well (e.g., the gender wage gap, Hünermund, 2018). Outside of the lab, individuals are not randomly allocated to situations, which makes it challenging to identify decision-maker bias in observational data.…”
Section: Figure 1 Mediational Claim Implicit In the Notion That Violent Crime Rates "Account For" Disparities In Being Fatally Shot By Thmentioning
confidence: 99%