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Using Propensity Scores In Quasiexperimental Designs 1st Edition William M Holmes

  • SKU: BELL-74600654
Using Propensity Scores In Quasiexperimental Designs 1st Edition William M Holmes
$ 31.00 $ 45.00 (-31%)

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Using Propensity Scores In Quasiexperimental Designs 1st Edition William M Holmes instant download after payment.

Publisher: SAGE Publications, Incorporated
File Extension: PDF
File size: 16.21 MB
Pages: 360
Author: William M. Holmes
ISBN: 9781452205267, 1452205264
Language: English
Year: 2013
Edition: 1

Product desciption

Using Propensity Scores In Quasiexperimental Designs 1st Edition William M Holmes by William M. Holmes 9781452205267, 1452205264 instant download after payment.

Using Propensity Scores in Quasi-Experimental Designs, by William M. Holmes, examines how propensity scores can be used to reduce bias with different kinds of quasi-experimental designs and to fix or improve broken experiments. Requiring minimal use of matrix and vector algebra, the book covers the causal assumptions of propensity score estimates and their many uses, linking these uses with analysis appropriate for different designs. Thorough coverage of bias assessment, propensity score estimation, and estimate improvement is provided, along with graphical and statistical methods for this process. Applications are included for analysis of variance and covariance, maximum likelihood and logistic regression, two-stage least squares, generalized linear regression, and general estimation equations. The examples use public data sets that have policy and programmatic relevance across a variety of disciplines.

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