In statistics, in particular in the design of experiments, a multi-valued treatment is a treatment that can take on more than two values. It is related to the dose-response model in the medical literature.

Description

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Generally speaking, treatment levels may be finite or infinite as well as ordinal or cardinal, which leads to a large collection of possible treatment effects to be studied in applications.[1] One example is the effect of different levels of program participation (e.g. full-time and part-time) in a job training program.[2]

Assume there exists a finite collection of multi-valued treatment status   with J some fixed integer. As in the potential outcomes framework, denote   the collection of potential outcomes under the treatment J, and   denotes the observed outcome and   is an indicator that equals 1 when the treatment equals j and 0 when it does not equal j, leading to a fundamental problem of causal inference.[3] A general framework that analyzes ordered choice models in terms of marginal treatment effects and average treatment effects has been extensively discussed by Heckman and Vytlacil.[4]

Recent work in the econometrics and statistics literature has focused on estimation and inference for multivalued treatments and ignorability conditions for identifying the treatment effects. In the context of program evaluation, the propensity score has been generalized to allow for multi-valued treatments,[5] while other work has also focused on the role of the conditional mean independence assumption.[6] Other recent work has focused more on the large sample properties of an estimator of the marginal mean treatment effect conditional on a treatment level in the context of a difference-in-differences model,[7] and on the efficient estimation of multi-valued treatment effects in a semiparametric framework.[8]

References

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  1. ^ Cattaneo, M. D. (2010): Multi-valued Treatment Effects. Encyclopedia of Research Design, ed. By N. J. Salkind, Sage Publications.
  2. ^ Wooldridge, J. (2002): Econometric Analysis of Cross Section and Panel Data, MIT Press, Cambridge, Mass.
  3. ^ Cattaneo, M. D. (2010): Efficient Semiparametric Estimation of Multi-Valued Treatment Effects under Ignorability. Journal of Econometrics 155(2), pp. 138–154.
  4. ^ Heckman, J. J., and E. J. Vytlacil (2007): Econometric Evaluation of Social Programs, Part II: Using the Marginal Treatment Effect to Organize Alternative Econometric Estimators to Evaluate Social Programs, and to Forecast the Effects in New Environments. Handbook of Econometrics, Vol 6, ed. by J. J. Heckman and E. E. Leamer. North Holland.
  5. ^ Imbens, G. (2000): The Role of the Propensity Score in Estimating Dose-Response Functions. Biometrika 87(3), pp. 706–710.
  6. ^ Lechner, M. (2001): Identification and Estimation of Causal Effects of Multiple Treatments under the Conditional Independence Assumption. Econometric Evaluation of Labour Market Policies, ed. by M. Lechner and F. Pfeiffer, pp. 43–58. Physica/Springer, Heidelberg.
  7. ^ Abadie, A. (2005): Semiparametric Difference-in-Differences Estimators. Review of Economic Studies 72(1), pp. 1–19.
  8. ^ Cattaneo, M. D. (2010): Efficient Semiparametric Estimation of Multi-Valued Treatment Effects under Ignorability. Journal of Econometrics 155(2), pp. 138–154