Applying a propensity score‐based weighting model to interrupted time series data: improving causal inference in programme evaluation

Journal of Evaluation in Clinical Practice 17 (6):1231-1238 (2011)
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Citations of this work

Challenges to validity in single‐group interrupted time series analysis.Ariel Linden - 2017 - Journal of Evaluation in Clinical Practice 23 (2):413-418.
Using classification tree analysis to generate propensity score weights.Ariel Linden & Paul R. Yarnold - 2017 - Journal of Evaluation in Clinical Practice 23 (4):703-712.
A comparison of approaches for stratifying on the propensity score to reduce bias.Ariel Linden - 2017 - Journal of Evaluation in Clinical Practice 23 (4):690-696.

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References found in this work

Experimental and quasi-experimental designs for generalized causal inference.William R. Shadish - 2001 - Boston: Houghton Mifflin. Edited by Thomas D. Cook & Donald Thomas Campbell.
Experimental and quasi-experimental designs for research.Donald Thomas Campbell - 1966 - Chicago,: R. McNally. Edited by Julian C. Stanley & N. L. Gage.

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