估计员
数学
最大似然
系列(地层学)
应用数学
统计
无穷
因子分析
动力系数
期望最大化算法
最大似然序列估计
卡尔曼滤波器
限制最大似然
计量经济学
数学分析
古生物学
生物
作者
Catherine Doz,Domenico Giannone,Lucrezia Reichlin
摘要
Is maximum likelihood suitable for factor models in large cross-sections of time series? We answer this question from both an asymptotic and an empirical perspective. We show that estimates of the common factors based on maximum likelihood are consistent for the size of the cross-section (n) and the sample size (T), going to infinity along any path, and that maximum likelihood is viable for n large. The estimator is robust to misspecification of cross-sectional and time series correlation of the idiosyncratic components. In practice, the estimator can be easily implemented using the Kalman smoother and the EM algorithm as in traditional factor analysis.
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