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Randomized algorithms of maximum likelihood estimation with spatial autoregressive models for large-scale networks

机译:大型网络空间自回归模型的最大似然估计的随机算法

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摘要

The spatial autoregressive (SAR) model is a classical model in spatial econometrics and has become an important tool in network analysis. However, with large-scale networks, existing methods of likelihood-based inference for the SAR model become computationally infeasible. We here investigate maximum likelihood estimation for the SAR model with partially observed responses from large-scale networks. By taking advantage of recent developments in randomized numerical linear algebra, we derive efficient algorithms to estimate the spatial autocorrelation parameter in the SAR model. Compelling experimental results from extensive simulation and real data examples demonstrate empirically that the estimator obtained by our method, called the randomized maximum likelihood estimator, outperforms the state of the art by giving smaller bias and standard error, especially for large-scale problems with moderate spatial autocorrelation. The theoretical properties of the estimator are explored, and consistency results are established.
机译:空间自回归(SAR)模型是空间计量经济学的经典模型,已成为网络分析中的重要工具。然而,利用大规模网络,对于SAR模型的基于似然性推断的现有方法变得可逆。我们在这里调查SAR模型的最大似然估计与大型网络的部分观察到的响应。通过利用最近在随机数值线性代数中的开发,我们推出了高效的算法来估计SAR模型中的空间自相关参数。来自广泛仿真和实际数据示例的令人信服的实验结果证明了我们通过提供较小的偏差和标准误差来实现由我们的方法所获得的估计器,称为随机最大似然估计器,尤其是适用于中等空间的大规模问题自相关。探讨了估算器的理论特性,建立了一致性结果。

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