2012
DOI: 10.1016/j.jue.2011.12.001
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A non-parametric test for industrial specialization

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Cited by 23 publications
(17 citation statements)
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“…Our null hypothesis is no spatial similarity between industry j and industry k conditional on the spatial density of industry j. 15 Similar to Duranton and Overman (2005) and Billings and Johnson (2012), we construct our counterfactual of randomly located (pseudo) industries based on two specific criteria: (1) the sample should be drawn from the set of locations where a establishment could potentially locate, and (2) the sample size used in constructing the counterfactual must be equal to the number of establishments in the indus-14 Even though we represent Wasserstein distance as a histogram in this figure, we calculate distances based on our bivariate spatial density functions and thus have no issues with assigning establishments to spatial units and MAUP.…”
Section: Colocalization Indexsupporting
confidence: 54%
“…Our null hypothesis is no spatial similarity between industry j and industry k conditional on the spatial density of industry j. 15 Similar to Duranton and Overman (2005) and Billings and Johnson (2012), we construct our counterfactual of randomly located (pseudo) industries based on two specific criteria: (1) the sample should be drawn from the set of locations where a establishment could potentially locate, and (2) the sample size used in constructing the counterfactual must be equal to the number of establishments in the indus-14 Even though we represent Wasserstein distance as a histogram in this figure, we calculate distances based on our bivariate spatial density functions and thus have no issues with assigning establishments to spatial units and MAUP.…”
Section: Colocalization Indexsupporting
confidence: 54%
“…Note that the above null model is reminiscent of the 'counterfactuals' used in the empirical literature on agglomeration economies [27][28][29]. Also, the expression of the representation (Eq.…”
Section: Definitionsmentioning
confidence: 99%
“…The method has enjoyed widespread adoption with more than 450 citations of the original 2005 article. Subsequent recent applications and extensions include Klier and McMillen (2008) for the U.S. auto industry; Nakajima, Saito, and Uesugi (2012) for the Japanese service sector; and Billings and Johnson (2012) construct an index of industrial specialization and compare it to results from K-densities. M-function: A third approach, termed as the M-function, was proposed by Marcon and Puech (2010), generalizing Ripley's K-function to inhomogeneous space.…”
Section: Inferring Colocation From Spatial Point Patterns: Prior Apprmentioning
confidence: 99%