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小样本中的最大似然估计:存在多余参数时的估计

Maximum Likelihood in Small Samples: Estimation in the Presence of Nuisance Parameters

Biometrika · 1980
被引 2
ABS 4

中文导读

研究了在小样本且存在多个未知多余参数时,如何通过最大化相对似然的正态性来更客观地应用最大似然方法估计目标参数,并给出了与精确结果的比较。

Abstract

The paper discusses various pivotal quantities associated with the application of maximum likelihood to small samples to estimate a parameter θ in the presence of other unknown parameters θ 2 ,…,θ k . This extends the previous work of Sprott (1973, 1975). The criterion of normality of the relative likelihood, applicable to the single parameter case, is here replaced by the normality of the relative likelihood maximized over θ 2 ,…θ k . This gives a more objective criterion for the application of standard maximum likelihood methods to estimate θ 1 than merely the numerical size of the sample. As for the single parameter case, it is necessary to emphasize that the normality of the maximum relative likelihood need not entail, nor be entailed by, a large sample size; it requires expressing the problem, if possible, in terms of a parameter φ=φ(θ 1 ), the maximum relative likelihood of which is approximately normal. Comparisons with exact results are given. But the practicality of such methods arises in more complicated cases when exact solutions are not easily available.

统计学计量经济学生物学生态学数学