fbpx
Wikipedia

Tobit model

In statistics, a tobit model is any of a class of regression models in which the observed range of the dependent variable is censored in some way.[1] The term was coined by Arthur Goldberger in reference to James Tobin,[2][a] who developed the model in 1958 to mitigate the problem of zero-inflated data for observations of household expenditure on durable goods.[3][b] Because Tobin's method can be easily extended to handle truncated and other non-randomly selected samples,[c] some authors adopt a broader definition of the tobit model that includes these cases.[4]

Tobin's idea was to modify the likelihood function so that it reflects the unequal sampling probability for each observation depending on whether the latent dependent variable fell above or below the determined threshold.[5] For a sample that, as in Tobin's original case, was censored from below at zero, the sampling probability for each non-limit observation is simply the height of the appropriate density function. For any limit observation, it is the cumulative distribution, i.e. the integral below zero of the appropriate density function. The tobit likelihood function is thus a mixture of densities and cumulative distribution functions.[6]

The likelihood function edit

Below are the likelihood and log likelihood functions for a type I tobit. This is a tobit that is censored from below at   when the latent variable  . In writing out the likelihood function, we first define an indicator function  :

 

Next, let   be the standard normal cumulative distribution function and   to be the standard normal probability density function. For a data set with N observations the likelihood function for a type I tobit is

 

and the log likelihood is given by

 

Reparametrization edit

The log-likelihood as stated above is not globally concave, which complicates the maximum likelihood estimation. Olsen suggested the simple reparametrization   and  , resulting in a transformed log-likelihood,

 

which is globally concave in terms of the transformed parameters.[7]

For the truncated (tobit II) model, Orme showed that while the log-likelihood is not globally concave, it is concave at any stationary point under the above transformation.[8][9]

Consistency edit

If the relationship parameter   is estimated by regressing the observed   on  , the resulting ordinary least squares regression estimator is inconsistent. It will yield a downwards-biased estimate of the slope coefficient and an upward-biased estimate of the intercept. Takeshi Amemiya (1973) has proven that the maximum likelihood estimator suggested by Tobin for this model is consistent.[10]

Interpretation edit

The   coefficient should not be interpreted as the effect of   on  , as one would with a linear regression model; this is a common error. Instead, it should be interpreted as the combination of (1) the change in   of those above the limit, weighted by the probability of being above the limit; and (2) the change in the probability of being above the limit, weighted by the expected value of   if above.[11]

Variations of the tobit model edit

Variations of the tobit model can be produced by changing where and when censoring occurs. Amemiya (1985, p. 384) classifies these variations into five categories (tobit type I – tobit type V), where tobit type I stands for the first model described above. Schnedler (2005) provides a general formula to obtain consistent likelihood estimators for these and other variations of the tobit model.[12]

Type I edit

The tobit model is a special case of a censored regression model, because the latent variable   cannot always be observed while the independent variable   is observable. A common variation of the tobit model is censoring at a value   different from zero:

 

Another example is censoring of values above  .

 

Yet another model results when   is censored from above and below at the same time.

 

The rest of the models will be presented as being bounded from below at 0, though this can be generalized as done for Type I.

Type II edit

Type II tobit models introduce a second latent variable.[13]

 

In Type I tobit, the latent variable absorbs both the process of participation and the outcome of interest. Type II tobit allows the process of participation (selection) and the outcome of interest to be independent, conditional on observable data.

The Heckman selection model falls into the Type II tobit,[14] which is sometimes called Heckit after James Heckman.[15]

Type III edit

Type III introduces a second observed dependent variable.

 
 

The Heckman model falls into this type.

Type IV edit

Type IV introduces a third observed dependent variable and a third latent variable.

 
 
 

Type V edit

Similar to Type II, in Type V only the sign of   is observed.

 
 

Non-parametric version edit

If the underlying latent variable   is not normally distributed, one must use quantiles instead of moments to analyze the observable variable  . Powell's CLAD estimator offers a possible way to achieve this.[16]

Applications edit

Tobit models have, for example, been applied to estimate factors that impact grant receipt, including financial transfers distributed to sub-national governments who may apply for these grants. In these cases, grant recipients cannot receive negative amounts, and the data is thus left-censored. For instance, Dahlberg and Johansson (2002) analyse a sample of 115 municipalities (42 of which received a grant).[17] Dubois and Fattore (2011) use a tobit model to investigate the role of various factors in European Union fund receipt by applying Polish sub-national governments.[18] The data may however be left-censored at a point higher than zero, with the risk of mis-specification. Both studies apply Probit and other models to check for robustness. Tobit models have also been applied in demand analysis to accommodate observations with zero expenditures on some goods. In a related application of tobit models, a system of nonlinear tobit regressions models has been used to jointly estimate a brand demand system with homoscedastic, heteroscedastic and generalized heteroscedastic variants.[19]

See also edit

Notes edit

  1. ^ When asked why it was called the "tobit" model, instead of Tobin, James Tobin explained that this term was introduced by Arthur Goldberger, either as a portmanteau of "Tobin's probit", or as a reference to the novel The Caine Mutiny, a novel by Tobin's friend Herman Wouk, in which Tobin makes a cameo as "Mr Tobit". Tobin reports having actually asked Goldberger which it was, and the man refused to say. See Shiller, Robert J. (1999). "The ET Interview: Professor James Tobin". Econometric Theory. 15 (6): 867–900. doi:10.1017/S0266466699156056. S2CID 122574727.
  2. ^ An almost identical model was independently suggested by Anders Hald in 1949, see Hald, A. (1949). "Maximum Likelihood Estimation of the Parameters of a Normal Distribution which is Truncated at a Known Point". Scandinavian Actuarial Journal. 49 (4): 119–134. doi:10.1080/03461238.1949.10419767.
  3. ^ A sample   is censored in   when   is observed for all observations  , but the true value of   is known only for a restricted range of observations. If the sample is truncated, both   and   are only observed if   falls in the restricted range. See Breen, Richard (1996). Regression Models : Censored, Samples Selected, or Truncated Data. Thousand Oaks: Sage. pp. 2–4. ISBN 0-8039-5710-6.

References edit

  1. ^ Hayashi, Fumio (2000). Econometrics. Princeton: Princeton University Press. pp. 518–521. ISBN 0-691-01018-8.
  2. ^ Goldberger, Arthur S. (1964). Econometric Theory. New York: J. Wiley. pp. 253–55. ISBN 9780471311010.
  3. ^ Tobin, James (1958). "Estimation of Relationships for Limited Dependent Variables" (PDF). Econometrica. 26 (1): 24–36. doi:10.2307/1907382. JSTOR 1907382.
  4. ^ Amemiya, Takeshi (1984). "Tobit Models: A Survey". Journal of Econometrics. 24 (1–2): 3–61. doi:10.1016/0304-4076(84)90074-5.
  5. ^ Kennedy, Peter (2003). A Guide to Econometrics (Fifth ed.). Cambridge: MIT Press. pp. 283–284. ISBN 0-262-61183-X.
  6. ^ Bierens, Herman J. (2004). Introduction to the Mathematical and Statistical Foundations of Econometrics. Cambridge University Press. p. 207.
  7. ^ Olsen, Randall J. (1978). "Note on the Uniqueness of the Maximum Likelihood Estimator for the Tobit Model". Econometrica. 46 (5): 1211–1215. doi:10.2307/1911445. JSTOR 1911445.
  8. ^ Orme, Chris (1989). "On the Uniqueness of the Maximum Likelihood Estimator in Truncated Regression Models". Econometric Reviews. 8 (2): 217–222. doi:10.1080/07474938908800171.
  9. ^ Iwata, Shigeru (1993). "A Note on Multiple Roots of the Tobit Log Likelihood". Journal of Econometrics. 56 (3): 441–445. doi:10.1016/0304-4076(93)90129-S.
  10. ^ Amemiya, Takeshi (1973). "Regression analysis when the dependent variable is truncated normal". Econometrica. 41 (6): 997–1016. doi:10.2307/1914031. JSTOR 1914031.
  11. ^ McDonald, John F.; Moffit, Robert A. (1980). "The Uses of Tobit Analysis". The Review of Economics and Statistics. 62 (2): 318–321. doi:10.2307/1924766. JSTOR 1924766.
  12. ^ Schnedler, Wendelin (2005). "Likelihood estimation for censored random vectors" (PDF). Econometric Reviews. 24 (2): 195–217. doi:10.1081/ETC-200067925. hdl:10419/127228. S2CID 55747319.
  13. ^ Amemiya, Takeshi (1985). "Tobit Models". Advanced econometrics. Cambridge, Mass: Harvard University Press. p. 384. ISBN 0-674-00560-0. OCLC 11728277.
  14. ^ Heckman, James J. (1979). "Sample Selection Bias as a Specification Error". Econometrica. 47 (1): 153–161. doi:10.2307/1912352. ISSN 0012-9682. JSTOR 1912352.
  15. ^ Sigelman, Lee; Zeng, Langche (1999). "Analyzing Censored and Sample-Selected Data with Tobit and Heckit Models". Political Analysis. 8 (2): 167–182. doi:10.1093/oxfordjournals.pan.a029811. ISSN 1047-1987. JSTOR 25791605.
  16. ^ Powell, James L (1 July 1984). "Least absolute deviations estimation for the censored regression model". Journal of Econometrics. 25 (3): 303–325. CiteSeerX 10.1.1.461.4302. doi:10.1016/0304-4076(84)90004-6.
  17. ^ Dahlberg, Matz; Johansson, Eva (2002-03-01). "On the Vote-Purchasing Behavior of Incumbent Governments". American Political Science Review. 96 (1): 27–40. CiteSeerX 10.1.1.198.4112. doi:10.1017/S0003055402004215. ISSN 1537-5943. S2CID 12718473.
  18. ^ Dubois, Hans F. W.; Fattore, Giovanni (2011-07-01). "Public Fund Assignment through Project Evaluation". Regional & Federal Studies. 21 (3): 355–374. doi:10.1080/13597566.2011.578827. ISSN 1359-7566. S2CID 154659642.
  19. ^ Baltas, George (2001). "Utility-consistent Brand Demand Systems with Endogenous Category Consumption: Principles and Marketing Applications". Decision Sciences. 32 (3): 399–422. doi:10.1111/j.1540-5915.2001.tb00965.x. ISSN 0011-7315.

Further reading edit

  • Amemiya, Takeshi (1985). "Tobit Models". Advanced Econometrics. Oxford: Basil Blackwell. pp. 360–411. ISBN 0-631-13345-3.
  • Breen, Richard (1996). "The Tobit Model for Censored Data". Regression Models : Censored, Samples Selected, or Truncated Data. Thousand Oaks: Sage. pp. 12–33. ISBN 0-8039-5710-6.
  • Gouriéroux, Christian (2000). "The Tobit Model". Econometrics of Qualitative Dependent Variables. New York: Cambridge University Press. pp. 170–207. ISBN 0-521-58985-1.
  • King, Gary (1989). "Models with Nonrandom Selection". Unifying Political Methodology : the Likehood Theory of Statistical Inference. Cambridge University Press. pp. 208–230. ISBN 0-521-36697-6.
  • Maddala, G. S. (1983). "Censored and Truncated Regression Models". Limited-Dependent and Qualitative Variables in Econometrics. New York: Cambridge University Press. pp. 149–196. ISBN 0-521-24143-X.

tobit, model, statistics, tobit, model, class, regression, models, which, observed, range, dependent, variable, censored, some, term, coined, arthur, goldberger, reference, james, tobin, developed, model, 1958, mitigate, problem, zero, inflated, data, observat. In statistics a tobit model is any of a class of regression models in which the observed range of the dependent variable is censored in some way 1 The term was coined by Arthur Goldberger in reference to James Tobin 2 a who developed the model in 1958 to mitigate the problem of zero inflated data for observations of household expenditure on durable goods 3 b Because Tobin s method can be easily extended to handle truncated and other non randomly selected samples c some authors adopt a broader definition of the tobit model that includes these cases 4 Tobin s idea was to modify the likelihood function so that it reflects the unequal sampling probability for each observation depending on whether the latent dependent variable fell above or below the determined threshold 5 For a sample that as in Tobin s original case was censored from below at zero the sampling probability for each non limit observation is simply the height of the appropriate density function For any limit observation it is the cumulative distribution i e the integral below zero of the appropriate density function The tobit likelihood function is thus a mixture of densities and cumulative distribution functions 6 Contents 1 The likelihood function 1 1 Reparametrization 1 2 Consistency 1 3 Interpretation 2 Variations of the tobit model 2 1 Type I 2 2 Type II 2 3 Type III 2 4 Type IV 2 5 Type V 2 6 Non parametric version 3 Applications 4 See also 5 Notes 6 References 7 Further readingThe likelihood function editBelow are the likelihood and log likelihood functions for a type I tobit This is a tobit that is censored from below at y L displaystyle y L nbsp when the latent variable y j y L displaystyle y j leq y L nbsp In writing out the likelihood function we first define an indicator function I displaystyle I nbsp I y 0 if y y L 1 if y gt y L displaystyle I y begin cases 0 amp text if y leq y L 1 amp text if y gt y L end cases nbsp Next let F displaystyle Phi nbsp be the standard normal cumulative distribution function and f displaystyle varphi nbsp to be the standard normal probability density function For a data set with N observations the likelihood function for a type I tobit is L b s j 1 N 1 s f y j X j b s I y j 1 F X j b y L s 1 I y j displaystyle mathcal L beta sigma prod j 1 N left frac 1 sigma varphi left frac y j X j beta sigma right right I y j left 1 Phi left frac X j beta y L sigma right right 1 I y j nbsp and the log likelihood is given by log L b s j 1 n I y j log 1 s f y j X j b s 1 I y j log 1 F X j b y L s y j gt y L log 1 s f y j X j b s y j y L log F y L X j b s displaystyle begin aligned log mathcal L beta sigma amp sum j 1 n I y j log left frac 1 sigma varphi left frac y j X j beta sigma right right 1 I y j log left 1 Phi left frac X j beta y L sigma right right amp sum y j gt y L log left frac 1 sigma varphi left frac y j X j beta sigma right right sum y j y L log left Phi left frac y L X j beta sigma right right end aligned nbsp Reparametrization edit The log likelihood as stated above is not globally concave which complicates the maximum likelihood estimation Olsen suggested the simple reparametrization b d g displaystyle beta delta gamma nbsp and s 2 g 2 displaystyle sigma 2 gamma 2 nbsp resulting in a transformed log likelihood log L d g y j gt y L log g log f g y j X j d y j y L log F g y L X j d displaystyle log mathcal L delta gamma sum y j gt y L left log gamma log left varphi left gamma y j X j delta right right right sum y j y L log left Phi left gamma y L X j delta right right nbsp which is globally concave in terms of the transformed parameters 7 For the truncated tobit II model Orme showed that while the log likelihood is not globally concave it is concave at any stationary point under the above transformation 8 9 Consistency edit If the relationship parameter b displaystyle beta nbsp is estimated by regressing the observed y i displaystyle y i nbsp on x i displaystyle x i nbsp the resulting ordinary least squares regression estimator is inconsistent It will yield a downwards biased estimate of the slope coefficient and an upward biased estimate of the intercept Takeshi Amemiya 1973 has proven that the maximum likelihood estimator suggested by Tobin for this model is consistent 10 Interpretation edit The b displaystyle beta nbsp coefficient should not be interpreted as the effect of x i displaystyle x i nbsp on y i displaystyle y i nbsp as one would with a linear regression model this is a common error Instead it should be interpreted as the combination of 1 the change in y i displaystyle y i nbsp of those above the limit weighted by the probability of being above the limit and 2 the change in the probability of being above the limit weighted by the expected value of y i displaystyle y i nbsp if above 11 Variations of the tobit model editVariations of the tobit model can be produced by changing where and when censoring occurs Amemiya 1985 p 384 classifies these variations into five categories tobit type I tobit type V where tobit type I stands for the first model described above Schnedler 2005 provides a general formula to obtain consistent likelihood estimators for these and other variations of the tobit model 12 Type I edit The tobit model is a special case of a censored regression model because the latent variable y i displaystyle y i nbsp cannot always be observed while the independent variable x i displaystyle x i nbsp is observable A common variation of the tobit model is censoring at a value y L displaystyle y L nbsp different from zero y i y i if y i gt y L y L if y i y L displaystyle y i begin cases y i amp text if y i gt y L y L amp text if y i leq y L end cases nbsp Another example is censoring of values above y U displaystyle y U nbsp y i y i if y i lt y U y U if y i y U displaystyle y i begin cases y i amp text if y i lt y U y U amp text if y i geq y U end cases nbsp Yet another model results when y i displaystyle y i nbsp is censored from above and below at the same time y i y i if y L lt y i lt y U y L if y i y L y U if y i y U displaystyle y i begin cases y i amp text if y L lt y i lt y U y L amp text if y i leq y L y U amp text if y i geq y U end cases nbsp The rest of the models will be presented as being bounded from below at 0 though this can be generalized as done for Type I Type II edit Type II tobit models introduce a second latent variable 13 y 2 i y 2 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 2i begin cases y 2i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp In Type I tobit the latent variable absorbs both the process of participation and the outcome of interest Type II tobit allows the process of participation selection and the outcome of interest to be independent conditional on observable data The Heckman selection model falls into the Type II tobit 14 which is sometimes called Heckit after James Heckman 15 Type III edit Type III introduces a second observed dependent variable y 1 i y 1 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 1i begin cases y 1i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp y 2 i y 2 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 2i begin cases y 2i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp The Heckman model falls into this type Type IV edit Type IV introduces a third observed dependent variable and a third latent variable y 1 i y 1 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 1i begin cases y 1i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp y 2 i y 2 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 2i begin cases y 2i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp y 3 i y 3 i if y 1 i 0 0 if y 1 i lt 0 displaystyle y 3i begin cases y 3i amp text if y 1i leq 0 0 amp text if y 1i lt 0 end cases nbsp Type V edit Similar to Type II in Type V only the sign of y 1 i displaystyle y 1i nbsp is observed y 2 i y 2 i if y 1 i gt 0 0 if y 1 i 0 displaystyle y 2i begin cases y 2i amp text if y 1i gt 0 0 amp text if y 1i leq 0 end cases nbsp y 3 i y 3 i if y 1 i 0 0 if y 1 i gt 0 displaystyle y 3i begin cases y 3i amp text if y 1i leq 0 0 amp text if y 1i gt 0 end cases nbsp Non parametric version edit If the underlying latent variable y i displaystyle y i nbsp is not normally distributed one must use quantiles instead of moments to analyze the observable variable y i displaystyle y i nbsp Powell s CLAD estimator offers a possible way to achieve this 16 Applications editTobit models have for example been applied to estimate factors that impact grant receipt including financial transfers distributed to sub national governments who may apply for these grants In these cases grant recipients cannot receive negative amounts and the data is thus left censored For instance Dahlberg and Johansson 2002 analyse a sample of 115 municipalities 42 of which received a grant 17 Dubois and Fattore 2011 use a tobit model to investigate the role of various factors in European Union fund receipt by applying Polish sub national governments 18 The data may however be left censored at a point higher than zero with the risk of mis specification Both studies apply Probit and other models to check for robustness Tobit models have also been applied in demand analysis to accommodate observations with zero expenditures on some goods In a related application of tobit models a system of nonlinear tobit regressions models has been used to jointly estimate a brand demand system with homoscedastic heteroscedastic and generalized heteroscedastic variants 19 See also editTruncated normal hurdle model Limited dependent variable Rectifier neural networks Truncated regression model Dynamic unobserved effects model Censored dependent variable Probit model the name tobit is a pun on both Tobin their creator and their similarities to probit models Notes edit When asked why it was called the tobit model instead of Tobin James Tobin explained that this term was introduced by Arthur Goldberger either as a portmanteau of Tobin s probit or as a reference to the novel The Caine Mutiny a novel by Tobin s friend Herman Wouk in which Tobin makes a cameo as Mr Tobit Tobin reports having actually asked Goldberger which it was and the man refused to say See Shiller Robert J 1999 The ET Interview Professor James Tobin Econometric Theory 15 6 867 900 doi 10 1017 S0266466699156056 S2CID 122574727 An almost identical model was independently suggested by Anders Hald in 1949 see Hald A 1949 Maximum Likelihood Estimation of the Parameters of a Normal Distribution which is Truncated at a Known Point Scandinavian Actuarial Journal 49 4 119 134 doi 10 1080 03461238 1949 10419767 A sample y i x i displaystyle y i mathbf x i nbsp is censored in y i displaystyle y i nbsp when x i displaystyle mathbf x i nbsp is observed for all observations i 1 2 n displaystyle i 1 2 ldots n nbsp but the true value of y i displaystyle y i nbsp is known only for a restricted range of observations If the sample is truncated both x i displaystyle mathbf x i nbsp and y i displaystyle y i nbsp are only observed if y i displaystyle y i nbsp falls in the restricted range See Breen Richard 1996 Regression Models Censored Samples Selected or Truncated Data Thousand Oaks Sage pp 2 4 ISBN 0 8039 5710 6 References edit Hayashi Fumio 2000 Econometrics Princeton Princeton University Press pp 518 521 ISBN 0 691 01018 8 Goldberger Arthur S 1964 Econometric Theory New York J Wiley pp 253 55 ISBN 9780471311010 Tobin James 1958 Estimation of Relationships for Limited Dependent Variables PDF Econometrica 26 1 24 36 doi 10 2307 1907382 JSTOR 1907382 Amemiya Takeshi 1984 Tobit Models A Survey Journal of Econometrics 24 1 2 3 61 doi 10 1016 0304 4076 84 90074 5 Kennedy Peter 2003 A Guide to Econometrics Fifth ed Cambridge MIT Press pp 283 284 ISBN 0 262 61183 X Bierens Herman J 2004 Introduction to the Mathematical and Statistical Foundations of Econometrics Cambridge University Press p 207 Olsen Randall J 1978 Note on the Uniqueness of the Maximum Likelihood Estimator for the Tobit Model Econometrica 46 5 1211 1215 doi 10 2307 1911445 JSTOR 1911445 Orme Chris 1989 On the Uniqueness of the Maximum Likelihood Estimator in Truncated Regression Models Econometric Reviews 8 2 217 222 doi 10 1080 07474938908800171 Iwata Shigeru 1993 A Note on Multiple Roots of the Tobit Log Likelihood Journal of Econometrics 56 3 441 445 doi 10 1016 0304 4076 93 90129 S Amemiya Takeshi 1973 Regression analysis when the dependent variable is truncated normal Econometrica 41 6 997 1016 doi 10 2307 1914031 JSTOR 1914031 McDonald John F Moffit Robert A 1980 The Uses of Tobit Analysis The Review of Economics and Statistics 62 2 318 321 doi 10 2307 1924766 JSTOR 1924766 Schnedler Wendelin 2005 Likelihood estimation for censored random vectors PDF Econometric Reviews 24 2 195 217 doi 10 1081 ETC 200067925 hdl 10419 127228 S2CID 55747319 Amemiya Takeshi 1985 Tobit Models Advanced econometrics Cambridge Mass Harvard University Press p 384 ISBN 0 674 00560 0 OCLC 11728277 Heckman James J 1979 Sample Selection Bias as a Specification Error Econometrica 47 1 153 161 doi 10 2307 1912352 ISSN 0012 9682 JSTOR 1912352 Sigelman Lee Zeng Langche 1999 Analyzing Censored and Sample Selected Data with Tobit and Heckit Models Political Analysis 8 2 167 182 doi 10 1093 oxfordjournals pan a029811 ISSN 1047 1987 JSTOR 25791605 Powell James L 1 July 1984 Least absolute deviations estimation for the censored regression model Journal of Econometrics 25 3 303 325 CiteSeerX 10 1 1 461 4302 doi 10 1016 0304 4076 84 90004 6 Dahlberg Matz Johansson Eva 2002 03 01 On the Vote Purchasing Behavior of Incumbent Governments American Political Science Review 96 1 27 40 CiteSeerX 10 1 1 198 4112 doi 10 1017 S0003055402004215 ISSN 1537 5943 S2CID 12718473 Dubois Hans F W Fattore Giovanni 2011 07 01 Public Fund Assignment through Project Evaluation Regional amp Federal Studies 21 3 355 374 doi 10 1080 13597566 2011 578827 ISSN 1359 7566 S2CID 154659642 Baltas George 2001 Utility consistent Brand Demand Systems with Endogenous Category Consumption Principles and Marketing Applications Decision Sciences 32 3 399 422 doi 10 1111 j 1540 5915 2001 tb00965 x ISSN 0011 7315 Further reading editAmemiya Takeshi 1985 Tobit Models Advanced Econometrics Oxford Basil Blackwell pp 360 411 ISBN 0 631 13345 3 Breen Richard 1996 The Tobit Model for Censored Data Regression Models Censored Samples Selected or Truncated Data Thousand Oaks Sage pp 12 33 ISBN 0 8039 5710 6 Gourieroux Christian 2000 The Tobit Model Econometrics of Qualitative Dependent Variables New York Cambridge University Press pp 170 207 ISBN 0 521 58985 1 King Gary 1989 Models with Nonrandom Selection Unifying Political Methodology the Likehood Theory of Statistical Inference Cambridge University Press pp 208 230 ISBN 0 521 36697 6 Maddala G S 1983 Censored and Truncated Regression Models Limited Dependent and Qualitative Variables in Econometrics New York Cambridge University Press pp 149 196 ISBN 0 521 24143 X Retrieved from https en wikipedia org w index php title Tobit model amp oldid 1167876961, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.