小域估计中的信息论方法

Information theoretic methods in small domain estimation

Econometric Reviews · 2015
被引 7
人大 A-ABS 3

中文导读

提出基于广义最大熵的信息论方法,利用辅助信息估计小区域商业和贸易统计量,无需强分布假设,通过真实和模拟数据验证效果。

Abstract

Small area estimation techniques are becoming increasingly used in survey applications to provide estimates for local areas of interest. The objective of this article is to develop and apply Information Theoretic (IT)-based formulations to estimate small area business and trade statistics. More specifically, we propose a Generalized Maximum Entropy (GME) approach to the problem of small area estimation that exploits auxiliary information relating to other known variables on the population and adjusts for consistency and additivity. The GME formulations, combining information from the sample together with out-of-sample aggregates of the population of interest, can be particularly useful in the context of small area estimation, for both direct and model-based estimators, since they do not require strong distributional assumptions on the disturbances. The performance of the proposed IT formulations is illustrated through real and simulated datasets.

小域估计信息论方法广义最大熵辅助信息