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When can we ignore measurement error in the running variable?
Yingying Dong
,
Michal Kolesár
Economics
Research output
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peer-review
6
Scopus citations
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Keyphrases
Measurement Error
100%
Doughnut
33%
Causal Interpretation
33%
Treatment Assignment
33%
Conditional Mean
33%
Average Treatment Effect
33%
Regression Discontinuity Design
33%
Fuzzy Design
33%
Mathematics
Measurement Error
100%
Conditionals
33%
Treatment Effect
33%
Treatment Assignment
33%
Causal Interpretation
33%
Economics, Econometrics and Finance
Causality Analysis
100%
Regression Discontinuity Design
100%