1 / 27

Presented by Gulzat

Implementation of a double-hurdle model Bruno Garcia The Stata Journal (2013), 13, Number 4, pp. 776-794. Presented by Gulzat. The paper is about. A double hurdle model (DHM) (Cragg, 1971 Econometrica 39: 829-844) What is new: Stata command dblhurdle (and predict after dblhurdle ).

Download Presentation

Presented by Gulzat

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Implementation of a double-hurdle modelBruno GarciaThe Stata Journal (2013), 13, Number 4, pp. 776-794 Presented by Gulzat

  2. The paper is about • A double hurdle model (DHM) (Cragg, 1971 Econometrica 39: 829-844) • What is new: Stata command dblhurdle (and predict after dblhurdle )

  3. Censored dependent variable models • E.g. Consumer or not if a consumer the value of the expenditure is known • Tobit: assumes that the factors explaining of becoming a consumer and how much to spend have the same effect on these two decisions • DHM: allows these effects to differ

  4. Tobit Model • and Two variables and one model to explain these two variables

  5. Double Hurdle Model 1. Potential consumer or not, D is not observed 2. • >0 • (or or () ) • ,)= unobserved elements effecting consumers/nonconsumers may affect amount of expenditure • Individuals make decisions in two steps

  6. Double Hurdle Model (following the paper.....) • Decision 1: participation • Decision 2: quantity (maybe zero) • =the observed consumption of an individual, dependent variable continous over positive values, but

  7. Double Hurdle Model • The log liklihood function for the DHM ():

  8. Double Hurdle Model • models the quantity equation • models the participation equation • The command estimates where • Restriction:

  9. Double Hurdle Model: Stata

  10. Double Hurdle Model

  11. Example: The use of the dblhurdle command using smoke.dta from Wooldridge (2010).

  12. Marginal effects • The number of years of schooling (educ) on: 1. The probability of smoking 2. The expected number of cigarettes smoked given that you smoke 3. The expected number of cigarettes smoked

  13. Prediction • ppar - the probability of being away from the corner conditional on the covariates: • ycond - expectation: • yexpected - expected value of y conditional on x and z:

  14. Marginal effects

  15. Marginal effects

  16. Marginal effects

  17. Monte Carlo simulation: Finite sample properties of the estimator • Three measures of performance: • The mean of the estimated parameters should be close to their true values. • The mean standard error of the estimated parameters over the repetitions should be close to the standard deviation of the point estimates. • The rejection rate of hypothesis tests should be close to the nominal size of the test.

  18. Monte Carlo simulation The data-generating process can be summarized as follows:

  19. Monte Carlo simulation • A dataset of 2,000 observations was created. • The x’s were drawn from a standard normal distribution, and the d’s were drawn from a Bernoulli with p = 1/2. • Refer to this dataset as “base”. • Iteration of the simulation: 1. Use “base”. 2. For each observation, draw (gen) from a standard normal. 3. For each observation, draw (gen) u from a standard normal. 4. For each observation, compute y according to the data-generating process presented above. 5. Fit the model, and save the values of interest with post.

  20. Monte Carlo simulation

  21. Monte Carlo simulation • A less intuitive issue: The set of regressors in the participation equation=the set of regressors of the quantity equation. • The model is weakly identified. • The data-generating process:

  22. Monte Carlo simulation

  23. Conclusion • Researchers may consider dblhurdle when using tobit model • Its flexibility allows the researcher to break down the modeled quantity along two useful dimensions, the “quantity” dimension and the “participation” dimension • The command presented in this article only allows for a single corner in the data • One desirable feature to add is the capability to handle dependent variables with two corners

More Related