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分组空间自回归模型

Grouped spatial autoregressive model

Computational Statistics and Data Analysis · 2022
被引 8
ABS 3

中文导读

针对传统空间自回归面板模型假设所有个体网络自相关系数相同的问题,提出分组空间自回归模型,允许不同组节点存在异质性,并研究了两种两步最小二乘估计方法及其渐近性质。

Abstract

With the development of the internet, network data with replications can be collected at different time points. The spatial autoregressive panel (SARP) model is a useful tool for analyzing such network data. However, in the traditional SARP model, all individuals are assumed to be homogeneous in their network autocorrelation coefficients, while in practice, correlations could differ for the nodes in different groups. Here, a grouped spatial autoregressive (GSAR) model based on the SARP model is proposed to permit network autocorrelation heterogeneity among individuals, while analyzing network data with independent replications across different time points and strong spatial effects . Each individual in the network belongs to a latent specific group, which is characterized by a set of parameters. Two estimation methods are studied: two-step naive least-squares estimator, and two-step conditional least-squares estimator. Furthermore, their corresponding asymptotic properties and technical conditions are investigated. To demonstrate the performance of the proposed GSAR model and its corresponding estimation methods, numerical analysis was performed on simulated and real data.

空间计量经济学网络数据分析面板数据模型统计估计方法