Economics Webinar - Best Linear and Quadratic Moments for Spatial Econometric Models

3:00pm - 4:30pm
Online via Zoom

We provide a novel analytic procedure to construct best linear and quadratic moments of the generalized method of moments (GMM) estimation for a large class of network and spatial econometric models, which generate a GMM estimator that is asymptotically more efficient than the quasi maximum likelihood estimator when the disturbances are non-normal. We apply this procedure to a high order spatial autoregressive model with spatial errors, where the disturbances are heteroskedastic with an unknown distribution. We apply the model and the estimator to employment data in US counties, which demonstrates spatial inter-dependence patterns and channels of regional economic growth.

講者/ 表演者:
Prof. Lung-fei Lee
Shanghai University of Finance and Economics

https://economics.osu.edu/people/lee.1777

語言
英文
適合對象
校友
教職員
研究生
主辦單位
經濟學系
聯絡方法

Julie Wong by email: fnjuwong@ust.hk

新增活動
請各校內團體將活動發布至大學活動日曆。