Agglomeration and firm-level productivity : a Bayesian spatial approach
Data(s) |
02/04/2013
02/04/2013
01/03/2013
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Resumo |
This paper estimates the impact of industrial agglomeration on firm-level productivity in Chinese manufacturing sectors. To account for spatial autocorrelation across regions, we formulate a hierarchical spatial model at the firm level and develop a Bayesian estimation algorithm. A Bayesian instrumental-variables approach is used to address endogeneity bias of agglomeration. Robust to these potential biases, we find that agglomeration of the same industry (i.e. localization) has a productivity-boosting effect, but agglomeration of urban population (i.e. urbanization) has no such effects. Additionally, the localization effects increase with educational levels of employees and the share of intermediate inputs in gross output. These results may suggest that agglomeration externalities occur through knowledge spillovers and input sharing among firms producing similar manufactures. |
Identificador |
IDE Discussion Paper. No. 403. 2013.3 http://hdl.handle.net/2344/1230 IDE Discussion Paper 403 |
Idioma(s) |
en eng |
Publicador |
Institute of Developing Economies, JETRO 日本貿易振興機構アジア経済研究所 |
Palavras-Chave | #China #Industrial policy #Manufacturing industries #Productivity #Local economy #Agglomeration economies #Spatial autocorrelation #Bayes #Chinese firm-level data #GIS #601.22 #AECC China 中国 #C21 - Cross-Sectional Models; #C51 - Model Construction and Estimation #R10 - General #R15 - Econometric and Input Output Models; Other Models |
Tipo |
Working Paper Technical Report |