Book contents
- Frontmatter
- Contents
- Contributor Acknowledgments
- Matched Sampling for Causal Effects
- My Introduction to Matched Sampling
- PART I THE EARLY YEARS AND THE INFLUENCE OF WILLIAM G. COCHRAN
- PART II UNIVARIATE MATCHING METHODS AND THE DANGERS OF REGRESSION ADJUSTMENT
- PART III BASIC THEORY OF MULTIVARIATE MATCHING
- 6 Multivariate Matching Methods That Are Equal Percent Bias Reducing, I: Some Examples
- 7 Multivariate Matching Methods That Are Equal Percent Bias Reducing, II: Maximums on Bias Reduction for Fixed Sample Sizes
- 8 Using Multivariate Matched Sampling and Regression Adjustment to Control Bias in Observational Studies
- 9 Bias Reduction Using Mahalanobis-Metric Matching
- PART IV FUNDAMENTALS OF PROPENSITY SCORE MATCHING
- PART V AFFINELY INVARIANT MATCHING METHODS WITH ELLIPSOIDALLY SYMMETRIC DISTRIBUTIONS, THEORY AND METHODOLOGY
- PART VI SOME APPLIED CONTRIBUTIONS
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
6 - Multivariate Matching Methods That Are Equal Percent Bias Reducing, I: Some Examples
Published online by Cambridge University Press: 05 June 2012
- Frontmatter
- Contents
- Contributor Acknowledgments
- Matched Sampling for Causal Effects
- My Introduction to Matched Sampling
- PART I THE EARLY YEARS AND THE INFLUENCE OF WILLIAM G. COCHRAN
- PART II UNIVARIATE MATCHING METHODS AND THE DANGERS OF REGRESSION ADJUSTMENT
- PART III BASIC THEORY OF MULTIVARIATE MATCHING
- 6 Multivariate Matching Methods That Are Equal Percent Bias Reducing, I: Some Examples
- 7 Multivariate Matching Methods That Are Equal Percent Bias Reducing, II: Maximums on Bias Reduction for Fixed Sample Sizes
- 8 Using Multivariate Matched Sampling and Regression Adjustment to Control Bias in Observational Studies
- 9 Bias Reduction Using Mahalanobis-Metric Matching
- PART IV FUNDAMENTALS OF PROPENSITY SCORE MATCHING
- PART V AFFINELY INVARIANT MATCHING METHODS WITH ELLIPSOIDALLY SYMMETRIC DISTRIBUTIONS, THEORY AND METHODOLOGY
- PART VI SOME APPLIED CONTRIBUTIONS
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
Summary
Abstract: Multivariate matching methods are commonly used in the behavioral and medical sciences in an attempt to control bias when randomization is not feasible. Some examples of multivariate matching methods are discussed in Althauser and Rubin [1970] and Cochran and Rubin [1973] but otherwise have received little attention in the literature. Here we present examples of multivariate matching methods that will yield the same percent reduction in bias for each matching variable for a variety of underlying distributions. Eleven distributional cases are considered and for each one, matching methods are described which are equal percent bias reducing. The methods discussed in Section 8 will probably be the most generally applicable in practice. These matching methods are based on the values of the sample best linear discriminant or define distance by the inverse of the sample covariance matrix.
INTRODUCTION
In an observational (non-randomized) study the objective is often to determine the effect of a dichotomous treatment variable (e.g., exposure to a specific drug) on several dependent variables (e.g., blood pressure, cholesterol levels). The treatment variable defines two populations of units, P1 (e.g., subjects given the drug) and P2 (subjects not given the drug). Since the treatments were not randomly assigned to the units, estimating the effect of the treatment variable on the dependent variables using random samples from P1 and P2 may be quite biased.
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- Information
- Matched Sampling for Causal Effects , pp. 117 - 128Publisher: Cambridge University PressPrint publication year: 2006