A'Hearn Brian
Department of Economics, Franklin & Marshall College, Box 3003, Lancaster, PA 17604-3003, USA.
Econ Hum Biol. 2004 Mar;2(1):5-19. doi: 10.1016/j.ehb.2003.12.003.
A restricted maximum likelihood (ML) estimator is presented and evaluated for use with truncated height samples. In the common situation of a small sample truncated at a point not far below the mean, the ordinary ML estimator suffers from high sampling variability. The restricted estimator imposes an a priori value on the standard deviation and freely estimates the mean, exploiting the known empirical stability of the former to obtain less variable estimates of the latter. Simulation results validate the conjecture that restricted ML behaves like restricted ordinary least squares (OLS), whose properties are well established on theoretical grounds. Both estimators display smaller sampling variability when constrained, whether the restrictions are correct or not. The bias induced by incorrect restrictions sets up a decision problem involving a bias-precision tradeoff, which can be evaluated using the mean squared error (MSE) criterion. Simulated MSEs suggest that restricted ML estimation offers important advantages when samples are small and truncation points are high, so long as the true standard deviation is within roughly 0.5 cm of the chosen value.
提出并评估了一种用于截断身高样本的受限最大似然(ML)估计器。在常见的小样本情况中,样本在均值以下不远的某一点处被截断,普通的ML估计器存在高抽样变异性。受限估计器对标准差施加一个先验值,并自由估计均值,利用前者已知的经验稳定性来获得后者的变异性较小的估计值。模拟结果验证了这样一个推测,即受限ML的表现类似于受限普通最小二乘法(OLS),后者的性质在理论基础上已得到充分确立。当受到约束时,无论约束是否正确,两种估计器都表现出较小的抽样变异性。由不正确的约束引起的偏差会引发一个涉及偏差 - 精度权衡的决策问题,这可以使用均方误差(MSE)准则进行评估。模拟的MSE表明,只要真实标准差在所选值的大约0.5厘米范围内,当样本量小且截断点高时,受限ML估计具有重要优势。