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Factorial Survey Experiment×Conjoint Survey Experiment×Survey Experiment×
分野Political SciencePolitical SciencePolitical Science
系統Process / pipelineProcess / pipelineProcess / pipeline
提唱年198220142011
提唱者Peter H. Rossi and collaboratorsJens Hainmueller, Daniel Hopkins, Teppei YamamotoExperimental political science; synthesized by Diana Mutz
種類Multi-factor randomized vignette experimentMulti-attribute forced-choice survey experiment with design-based causal estimandsRandomized experiment embedded in a survey
原典Wallander, L. (2009). 25 Years of Factorial Surveys in Sociology: A Review. Social Science Research, 38(3), 505–520. DOI ↗Hainmueller, J., Hopkins, D. J., & Yamamoto, T. (2014). Causal Inference in Conjoint Analysis: Understanding Multidimensional Choices via Stated Preference Experiments. Political Analysis, 22(1), 1–30. DOI ↗Mutz, D. C. (2011). Population-Based Survey Experiments. Princeton, NJ: Princeton University Press. ISBN: 9780691144528
別名Factorial survey, Factorial survey approach, Multi-factor vignette survey, Rossi vignette methodCausal conjoint, Forced-choice conjoint experiment, AMCE conjoint, Conjoint experimentPopulation-based survey experiment, Survey-embedded experiment, Question-wording experiment, Framing experiment
関連344
概要A factorial survey experiment, often simply called a factorial survey, asks respondents to judge short descriptions — vignettes — whose multiple features are fully crossed and randomly varied. By factorially combining many dimensions, each at several levels, the design generates a large universe of vignettes; respondents rate a random sample of them, and regression of the ratings on the dimension levels recovers the independent causal effect of each feature on judgment. It scales the single-scenario vignette experiment up to many simultaneously manipulated attributes.A conjoint survey experiment presents respondents with profiles — of candidates, immigrants, policies, or products — described by several attributes whose levels are independently randomized, and asks respondents to choose between or rate the profiles. Hainmueller, Hopkins, and Yamamoto's 2014 framework places this design on a rigorous causal footing, defining the average marginal component effect (AMCE) as the design-based causal effect of an attribute level, averaged over the randomization distribution of all other attributes. It lets political scientists estimate the relative causal weight of many decision factors simultaneously from realistic, multidimensional choices.A survey experiment embeds a randomized experiment inside a survey: respondents are randomly assigned to different versions of a question, frame, or stimulus, and their answers are compared to estimate a causal effect. By combining the internal validity of randomization with the representative samples and rich measurement of survey research, survey experiments — especially population-based ones — let political scientists draw causal inferences about how information, framing, or message attributes shape public attitudes and behavior.
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ScholarGate手法を比較: Factorial Survey Experiment · Conjoint Survey Experiment · Survey Experiment. 2026-06-25に以下より取得 https://scholargate.app/ja/compare