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Hausman test : ウィキペディア英語版
Durbin–Wu–Hausman test
The Durbin–Wu–Hausman test (also called Hausman specification test) is a statistical hypothesis test in econometrics named after James Durbin, De-Min Wu, and Jerry A. Hausman.〔〔〔 The test evaluates the consistency of an estimator when compared to an alternative, less efficient, estimator which is already known to be consistent. It helps one evaluate if a statistical model corresponds to the data.
==Details==
Consider the linear model ''y'' = ''bX'' + ''e'', where ''y'' is the dependent variable and ''X'' is vector of regressors, ''b'' is a vector of coefficients and ''e'' is the error term. We have two estimators for ''b'': ''b''0 and ''b''1. Under the null hypothesis, both of these estimators are consistent, but ''b''1 is efficient (has the smallest asymptotic variance), at least in the class of estimators containing ''b''0. Under the alternative hypothesis, ''b''0 is consistent, whereas ''b''1 isn’t.
Then the Wu–Hausman statistic is:〔
: H=(b_-b_)'\big(\operatorname(b_)-\operatorname(b_)\big)^\dagger(b_-b_),
where denotes the Moore–Penrose pseudoinverse. Under the null hypothesis, this statistic has asymptotically the chi-squared distribution with the number of degrees of freedom equal to the rank of matrix .
If we reject the null hypothesis, it means that b1 is inconsistent. This test can be used to check for the endogeneity of a variable (by comparing instrumental variable (IV) estimates to ordinary least squares (OLS) estimates). It can also be used to check the validity of extra instruments by comparing IV estimates using a full set of instruments ''Z'' to IV estimates that use a proper subset of ''Z''. Note that in order for the test to work in the latter case, we must be certain of the validity of the subset of ''Z'' and that subset must have enough instruments to identify the parameters of the equation.
Hausman also showed that the covariance between an efficient estimator and the difference of an efficient and inefficient estimator is zero.

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
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