金融百科  > 所属分类  >  统计   
[0] 评论[0] 编辑

generalized method of moment







  Generalized method of moments
  From Wikipedia, the free encyclopedia
  Jump to: navigation, search
  GMM may also mean Gaussian mixture model.
  The generalized method of moments is a very general statistical method for obtaining estimates of parameters of statistical models. It is a generalization, developed by Lars Peter Hansen, of the method of moments.
  The term GMM is very popular among econometricians but is hardly used at all outside of economics, where the slightly more general term estimating equations is preferred. The method is also closely related to the classical theory of minimum chi-square estimation.
  Description
  The idea of the generalized method of moments is to use moment conditions that can be found from the problem with little effort. We assume that the data are a stochastic process In mathematical language, we start out with a (vector valued) function f that depends both on the parameter and a single observation and that has mean zero for the true value of the parameter, θ = θ0, i.e.
  图(1)
  To turn this function into a parameter estimate, we minimize the associated chi-square statistic
  图(2)
  where superscript T is used for transpose, and A is a matrix. A may be known a priori or estimated from the sample.
  由于技术原因图1无法上传,
  详见
  http://en.wikipedia.org/wiki/Generalized_method_of_moments

附件列表


0

词条内容仅供参考,如果您需要解决具体问题
(尤其在法律、医学等领域),建议您咨询相关领域专业人士。

如果您认为本词条还有待完善,请 编辑

上一篇 G7经济建模软件    下一篇 ICD系统

相关标签

热门标签