Choosing the Right Spatial Weighting Matrix in a Quantile Regression Model
Author(s) -
Philip Kostov
Publication year - 2013
Publication title -
isrn economics
Language(s) - English
Resource type - Journals
ISSN - 2090-8938
DOI - 10.1155/2013/158240
Subject(s) - quantile , quantile regression , weighting , context (archaeology) , parametric statistics , econometrics , mathematics , linear model , linear regression , computer science , statistics , medicine , paleontology , biology , radiology
This paper proposes computationally tractable methods for selecting the appropriate spatial weighting matrix in the context of a spatial quantile regression model. This selection is a notoriously difficult problem even in linear spatial models and is even more difficult in a quantile regression setup. The proposal is illustrated by an empirical example and manages to produce tractable models. One important feature of the proposed methodology is that by allowing different degrees and forms of spatial dependence across quantiles it further relaxes the usual quantile restriction attributable to the linear quantile regression. In this way we can obtain a more robust, with regard to potential functional misspecification, model, but nevertheless preserve the parametric rate of convergence and the established inferential apparatus associated with the linear quantile regression approach.
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