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Randomized experiments are becoming increasingly common in political
science. Despite their well-known advantages over observational
studies, randomized experiments are not free from complications. In
particular, researchers often cannot force subjects to comply with
treatment assignment and to provide the requested information.
Furthermore, simple randomization of treatments remains the most
commonly used method in the discipline even though more efficient
procedures are available. Building on the recent statistical
literature, we address these methodological issues by offering general
recommendations for designing and analyzing randomized experiements to
improve the validity and efficiency of causal inference. We also
develop a new statistical methodology to explore causal
heterogeneity. The proposed methods are applied to a survey experiment
conducted during Japan's 2004 Upper House election, where randomly
selected voters were encouraged to obtain policy information from
political parties' websites. An R package is publicly available for
implementing various methods useful for designing and analyzing
randomized experiments.
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Horiuchi, Yusaku, Kosuke Imai, and Naoko
Taniguchi, (2007). ``Replication data for ``Designing and
Analyzing Randomized Experiments: Application to a Japanese Election Survey Experiment.'''', hdl:1902.1/JMFHKLRCXS
http://id.thedata.org/hdl%3A1902.1%2FJMFHKLRCXS
Henry A. Murray Research Archive [distributor(DDI)]
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