Perbandingan Inferensi Kausal Versi Donald Campbell dengan Donald Rubin

T Dicky Hastjarjo
(Submitted 27 November 2017)
(Published 6 June 2018)

Abstract


In a psychological experiment, the manipulation of the independent variable is deliberatelyintroduced to observe its effects on the dependent variable. The cause-effect relationshipthen is inferred. This article explained briefly two models of causal inferences. One modeldeveloped by Donald Campbell is more focused on design elements in ruling out threats tovalidity. On the other hand, Rubin’s model of causal inference emphasized in mathematicalprecision of the causal effects. The comparison of the two different but complementarymodels involves both randomized experiment and observational study.

Keywords


causality; causal model; experimental validity; threats to validity

Full Text: PDF

DOI: 10.22146/buletinpsikologi.30884

References


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