Using Multivariate Matched Sampling and Regression Adjustment to Control Bias in Observational Studies
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Publication:3048083
DOI10.2307/2286330zbMath0413.62047OpenAlexW4230754796MaRDI QIDQ3048083
Publication date: 1979
Published in: Journal of the American Statistical Association (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.2307/2286330
Monte Carlo methodsquasi-experimentscovariance adjustmentMahalanobis metricmultivariate matched samplingnonrandomized
Multivariate analysis (62H99) Sampling theory, sample surveys (62D05) Monte Carlo methods (65C05) Analysis of variance and covariance (ANOVA) (62J10)
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