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Minimum-distance estimation

Minimum-distance estimation (MDE) is a conceptual method for fitting a statistical model to data, usually the empirical distribution. Often-used estimators such as ordinary least squares can be thought of as special cases of minimum-distance estimation.

While consistent and asymptotically normal, minimum-distance estimators are generally not statistically efficient when compared to maximum likelihood estimators, because they omit the Jacobian usually present in the likelihood function. This, however, substantially reduces the computational complexity of the optimization problem.

Definition

Let   be an independent and identically distributed (iid) random sample from a population with distribution   and  .

Let   be the empirical distribution function based on the sample.

Let   be an estimator for  . Then   is an estimator for  .

Let   be a functional returning some measure of "distance" between the two arguments. The functional   is also called the criterion function.

If there exists a   such that  , then   is called the minimum-distance estimate of  .

(Drossos & Philippou 1980, p. 121)

Statistics used in estimation

Most theoretical studies of minimum-distance estimation, and most applications, make use of "distance" measures which underlie already-established goodness of fit tests: the test statistic used in one of these tests is used as the distance measure to be minimised. Below are some examples of statistical tests that have been used for minimum-distance estimation.

Chi-square criterion

The chi-square test uses as its criterion the sum, over predefined groups, of the squared difference between the increases of the empirical distribution and the estimated distribution, weighted by the increase in the estimate for that group.

Cramér–von Mises criterion

The Cramér–von Mises criterion uses the integral of the squared difference between the empirical and the estimated distribution functions (Parr & Schucany 1980, p. 616).

Kolmogorov–Smirnov criterion

The Kolmogorov–Smirnov test uses the supremum of the absolute difference between the empirical and the estimated distribution functions (Parr & Schucany 1980, p. 616).

Anderson–Darling criterion

The Anderson–Darling test is similar to the Cramér–von Mises criterion except that the integral is of a weighted version of the squared difference, where the weighting relates the variance of the empirical distribution function (Parr & Schucany 1980, p. 616).

Theoretical results

The theory of minimum-distance estimation is related to that for the asymptotic distribution of the corresponding statistical goodness of fit tests. Often the cases of the Cramér–von Mises criterion, the Kolmogorov–Smirnov test and the Anderson–Darling test are treated simultaneously by treating them as special cases of a more general formulation of a distance measure. Examples of the theoretical results that are available are: consistency of the parameter estimates; the asymptotic covariance matrices of the parameter estimates.

See also

References

  • Boos, Dennis D. (1982). "Minimum anderson-darling estimation". Communications in Statistics – Theory and Methods. 11 (24): 2747–2774. doi:10.1080/03610928208828420. S2CID 119812213.
  • Blyth, Colin R. (June 1970). "On the Inference and Decision Models of Statistics". The Annals of Mathematical Statistics. 41 (3): 1034–1058. doi:10.1214/aoms/1177696980.
  • Drossos, Constantine A.; Philippou, Andreas N. (December 1980). "A Note on Minimum Distance Estimates". Annals of the Institute of Statistical Mathematics. 32 (1): 121–123. doi:10.1007/BF02480318. S2CID 120207485.
  • Parr, William C.; Schucany, William R. (1980). "Minimum Distance and Robust Estimation". Journal of the American Statistical Association. 75 (371): 616–624. CiteSeerX 10.1.1.878.5446. doi:10.1080/01621459.1980.10477522. JSTOR 2287658.
  • Wolfowitz, J. (March 1957). "The minimum distance method". The Annals of Mathematical Statistics. 28 (1): 75–88. doi:10.1214/aoms/1177707038.

minimum, distance, estimation, conceptual, method, fitting, statistical, model, data, usually, empirical, distribution, often, used, estimators, such, ordinary, least, squares, thought, special, cases, minimum, distance, estimation, while, consistent, asymptot. Minimum distance estimation MDE is a conceptual method for fitting a statistical model to data usually the empirical distribution Often used estimators such as ordinary least squares can be thought of as special cases of minimum distance estimation While consistent and asymptotically normal minimum distance estimators are generally not statistically efficient when compared to maximum likelihood estimators because they omit the Jacobian usually present in the likelihood function This however substantially reduces the computational complexity of the optimization problem Contents 1 Definition 2 Statistics used in estimation 2 1 Chi square criterion 2 2 Cramer von Mises criterion 2 3 Kolmogorov Smirnov criterion 2 4 Anderson Darling criterion 3 Theoretical results 4 See also 5 ReferencesDefinition EditLet X 1 X n displaystyle displaystyle X 1 ldots X n be an independent and identically distributed iid random sample from a population with distribution F x 8 8 8 displaystyle F x theta colon theta in Theta and 8 R k k 1 displaystyle Theta subseteq mathbb R k k geq 1 Let F n x displaystyle displaystyle F n x be the empirical distribution function based on the sample Let 8 displaystyle hat theta be an estimator for 8 displaystyle displaystyle theta Then F x 8 displaystyle F x hat theta is an estimator for F x 8 displaystyle displaystyle F x theta Let d displaystyle d cdot cdot be a functional returning some measure of distance between the two arguments The functional d displaystyle displaystyle d is also called the criterion function If there exists a 8 8 displaystyle hat theta in Theta such that d F x 8 F n x inf d F x 8 F n x 8 8 displaystyle d F x hat theta F n x inf d F x theta F n x theta in Theta then 8 displaystyle hat theta is called the minimum distance estimate of 8 displaystyle displaystyle theta Drossos amp Philippou 1980 p 121 Statistics used in estimation EditMost theoretical studies of minimum distance estimation and most applications make use of distance measures which underlie already established goodness of fit tests the test statistic used in one of these tests is used as the distance measure to be minimised Below are some examples of statistical tests that have been used for minimum distance estimation Chi square criterion Edit The chi square test uses as its criterion the sum over predefined groups of the squared difference between the increases of the empirical distribution and the estimated distribution weighted by the increase in the estimate for that group Cramer von Mises criterion Edit The Cramer von Mises criterion uses the integral of the squared difference between the empirical and the estimated distribution functions Parr amp Schucany 1980 p 616 Kolmogorov Smirnov criterion Edit The Kolmogorov Smirnov test uses the supremum of the absolute difference between the empirical and the estimated distribution functions Parr amp Schucany 1980 p 616 Anderson Darling criterion Edit The Anderson Darling test is similar to the Cramer von Mises criterion except that the integral is of a weighted version of the squared difference where the weighting relates the variance of the empirical distribution function Parr amp Schucany 1980 p 616 Theoretical results EditThe theory of minimum distance estimation is related to that for the asymptotic distribution of the corresponding statistical goodness of fit tests Often the cases of the Cramer von Mises criterion the Kolmogorov Smirnov test and the Anderson Darling test are treated simultaneously by treating them as special cases of a more general formulation of a distance measure Examples of the theoretical results that are available are consistency of the parameter estimates the asymptotic covariance matrices of the parameter estimates See also EditMaximum likelihood estimation Maximum spacing estimationReferences EditBoos Dennis D 1982 Minimum anderson darling estimation Communications in Statistics Theory and Methods 11 24 2747 2774 doi 10 1080 03610928208828420 S2CID 119812213 Blyth Colin R June 1970 On the Inference and Decision Models of Statistics The Annals of Mathematical Statistics 41 3 1034 1058 doi 10 1214 aoms 1177696980 Drossos Constantine A Philippou Andreas N December 1980 A Note on Minimum Distance Estimates Annals of the Institute of Statistical Mathematics 32 1 121 123 doi 10 1007 BF02480318 S2CID 120207485 Parr William C Schucany William R 1980 Minimum Distance and Robust Estimation Journal of the American Statistical Association 75 371 616 624 CiteSeerX 10 1 1 878 5446 doi 10 1080 01621459 1980 10477522 JSTOR 2287658 Wolfowitz J March 1957 The minimum distance method The Annals of Mathematical Statistics 28 1 75 88 doi 10 1214 aoms 1177707038 Retrieved from https en wikipedia org w index php title Minimum distance estimation amp oldid 1086677901, wikipedia, wiki, book, books, library,

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