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Maximum likelihood estimation
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=== Second-order efficiency after correction for bias === However, when we consider the higher-order terms in the [[Edgeworth expansion|expansion]] of the distribution of this estimator, it turns out that {{math|''ΞΈ''<sub>mle</sub>}} has bias of order {{frac|1|{{mvar|n}}}}. This bias is equal to (componentwise)<ref>See formula 20 in {{cite journal | last1 = Cox | first1 = David R. | author-link1=David R. Cox | last2 = Snell | first2 = E. Joyce | author-link2 = Joyce Snell | title = A general definition of residuals | year = 1968 | journal = [[Journal of the Royal Statistical Society, Series B]] | pages = 248β275 | jstor = 2984505 | volume=30 | issue = 2 }} </ref> <math display="block"> b_h \; \equiv \; \operatorname{\mathbb E} \biggl[ \; \left( \widehat\theta_\mathrm{mle} - \theta_0 \right)_h \; \biggr] \; = \; \frac{1}{\,n\,} \, \sum_{i, j, k = 1}^m \; \mathcal{I}^{h i} \; \mathcal{I}^{j k} \left( \frac{1}{\,2\,} \, K_{i j k} \; + \; J_{j,i k} \right) </math> where <math>\mathcal{I}^{j k}</math> (with superscripts) denotes the (''j,k'')-th component of the ''inverse'' Fisher information matrix <math>\mathcal{I}^{-1}</math>, and <math display="block"> \frac{1}{\,2\,} \, K_{i j k} \; + \; J_{j,i k} \; = \; \operatorname{\mathbb E}\,\biggl[\; \frac12 \frac{\partial^3 \ln f_{\theta_0}(X_t)}{\partial\theta_i\;\partial\theta_j\;\partial\theta_k} + \frac{\;\partial\ln f_{\theta_0}(X_t)\;}{\partial\theta_j}\,\frac{\;\partial^2\ln f_{\theta_0}(X_t)\;}{\partial\theta_i \, \partial\theta_k} \; \biggr] ~ . </math> Using these formulae it is possible to estimate the second-order bias of the maximum likelihood estimator, and ''correct'' for that bias by subtracting it: <math display="block"> \widehat{\theta\,}^*_\text{mle} = \widehat{\theta\,}_\text{mle} - \widehat{b\,} ~ . </math> This estimator is unbiased up to the terms of order {{sfrac|1| {{mvar|n}} }}, and is called the '''bias-corrected maximum likelihood estimator'''. This bias-corrected estimator is {{em|second-order efficient}} (at least within the curved exponential family), meaning that it has minimal mean squared error among all second-order bias-corrected estimators, up to the terms of the order {{sfrac|1| {{mvar|n}}<sup>2</sup> }} . It is possible to continue this process, that is to derive the third-order bias-correction term, and so on. However, the maximum likelihood estimator is ''not'' third-order efficient.<ref> {{cite journal |last = Kano |first = Yutaka |title = Third-order efficiency implies fourth-order efficiency |year = 1996 |journal = Journal of the Japan Statistical Society |volume = 26 |pages = 101β117 |doi = 10.14490/jjss1995.26.101 |doi-access= free }} </ref>
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