We develop new higher-order asymptotic techniques for the Gaussian maximum likelihood estimator in a spatial panel data model, with fixed effects, time-varying covariates, and spatially correlated errors. Our saddlepoint density and tail area approximation feature relative error of order $O(1/(n(T-1)))$ with $n$ being the cross-sectional dimension and $T$ the time-series dimension. The main theoretical tool is the tilted-Edgeworth technique in a non-identically distributed setting. The density approximation is always non-negative, does not need resampling, and is accurate in the tails. Monte Carlo experiments on density approximation and testing in the presence of nuisance parameters illustrate the good performance of our approximation over first-order asymptotics and Edgeworth expansions. An empirical application to the investment-saving relationship in OECD (Organisation for Economic Co-operation and Development) countries shows disagreement between testing results based on first-order asymptotics and saddlepoint techniques.
翻译:我们为高斯在空间面板数据模型中具有固定效果、时间变量和空间相关差错的空间面板数据模型中的最大概率估测器开发了新的较高顺序的消毒技术。我们的马鞍点密度和尾端近似值的相对差值为$(1/(n(T-1)),美元为跨部门维度,美元为时间序列维度。主要理论工具是非身份分布环境中的倾斜-Edgeworth技术。密度近似总是非负向的,不需要重新标定,尾部也是准确的。蒙特卡洛关于密度近似的实验和在存在扰动参数的情况下进行测试,显示了我们接近第一顺序的随机度和Edgeworth扩展的优劣性。经合组织(经济合作与发展组织)各国投资节约关系的经验应用显示,根据第一顺序的随机和顶端技术,测试结果存在分歧。