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Advances in Econometrics is a research annual whose editorial
policy is to publish original research articles that contain enough
details so that economists and econometricians who are not experts
in the topics will find them accessible and useful in their
research. Volume 37 exemplifies this focus by highlighting key
research from new developments in econometrics.
Although interest in spatial regression models has surged in recent
years, a comprehensive, up-to-date text on these approaches does
not exist. Filling this void, Introduction to Spatial Econometrics
presents a variety of regression methods used to analyze spatial
data samples that violate the traditional assumption of
independence between observations. It explores a wide range of
alternative topics, including maximum likelihood and Bayesian
estimation, various types of spatial regression specifications, and
applied modeling situations involving different circumstances.
Leaders in this field, the authors clarify the often-mystifying
phenomenon of simultaneous spatial dependence. By presenting new
methods, they help with the interpretation of spatial regression
models, especially ones that include spatial lags of the dependent
variable. The authors also examine the relationship between
spatiotemporal processes and long-run equilibrium states that are
characterized by simultaneous spatial dependence. MATLAB (R)
toolboxes useful for spatial econometric estimation are available
on the authors' websites. This work covers spatial econometric
modeling as well as numerous applied illustrations of the methods.
It encompasses many recent advances in spatial econometric
models-including some previously unpublished results.
Although interest in spatial regression models has surged in recent
years, a comprehensive, up-to-date text on these approaches does
not exist. Filling this void, Introduction to Spatial Econometrics
presents a variety of regression methods used to analyze spatial
data samples that violate the traditional assumption of
independence between observations. It explores a wide range of
alternative topics, including maximum likelihood and Bayesian
estimation, various types of spatial regression specifications, and
applied modeling situations involving different circumstances.
Leaders in this field, the authors clarify the often-mystifying
phenomenon of simultaneous spatial dependence. By presenting new
methods, they help with the interpretation of spatial regression
models, especially ones that include spatial lags of the dependent
variable. The authors also examine the relationship between
spatiotemporal processes and long-run equilibrium states that are
characterized by simultaneous spatial dependence. MATLAB (R)
toolboxes useful for spatial econometric estimation are available
on the authors' websites. This work covers spatial econometric
modeling as well as numerous applied illustrations of the methods.
It encompasses many recent advances in spatial econometric
models-including some previously unpublished results.
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