Chen Hao, Han Lanshan, Lim Alvin
Retail Solutions Research & Development, NielsenIQ, Chicago, IL, USA.
Measured, Inc., Austin, TX, USA.
J Appl Stat. 2023 Sep 24;51(11):2116-2138. doi: 10.1080/02664763.2023.2260576. eCollection 2024.
Linear Mixed Effects (LME) models are powerful statistical tools that have been employed in many different real-world applications such as retail data analytics, marketing measurement, and medical research. Statistical inference is often conducted via maximum likelihood estimation with Normality assumptions on the random effects. Nevertheless, for many applications in the retail industry, it is often necessary to consider non-Normal distributions on the random effects when considering the unknown parameters' business interpretations. Motivated by this need, a linear mixed effects model with possibly non-Normal distribution is studied in this research. We propose a general estimating framework based on a saddlepoint approximation (SA) of the probability density function of the dependent variable, which leads to constrained nonlinear optimization problems. The classical LME model with Normality assumption can then be viewed as a special case under the proposed general SA framework. Compared with the existing approach, the proposed method enhances the real-world interpretability of the estimates with satisfactory model fits.
线性混合效应(LME)模型是强大的统计工具,已应用于许多不同的实际应用中,如零售数据分析、营销测量和医学研究。统计推断通常通过对随机效应进行正态性假设的最大似然估计来进行。然而,对于零售业中的许多应用,在考虑未知参数的业务解释时,通常有必要考虑随机效应的非正态分布。出于这一需求,本研究对具有可能非正态分布的线性混合效应模型进行了研究。我们基于因变量概率密度函数的鞍点近似(SA)提出了一个通用估计框架,这导致了约束非线性优化问题。具有正态性假设的经典LME模型随后可被视为所提出的通用SA框架下的一个特殊情况。与现有方法相比,所提出的方法在模型拟合良好的情况下增强了估计值在现实世界中的可解释性。