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100 _aFang, Li
_957345
245 _aAgglomeration and innovation:
_bSelection or true effect?/
260 _bSage,
_c2020.
300 _aVol. 52, Issue 2, 2020 ( 423–448 p.)
520 _aThis paper separates two mechanisms through which agglomeration increases average firm innovation: selection (less innovative firms being forced out of agglomerations) and true agglomeration (firms become more innovative). I apply a quantile regression to estimate the distribution of firm innovation and separate these two mechanisms. Linking a unique establishment-level dataset with the patent dataset in the state of Maryland for the period 2004–2013, I find that a 1-mile radius area with above-median employment concentration significantly encourages firm innovation. An average establishment that files for at least one patent during the study period increases citation-weighted patent applications by 31.2% to 31.5% in such employment centers. I also find evidence of selection: non-innovators are 1.3% less likely to survive in agglomerations. The coexistence of agglomeration and selection causes the result of an ordinary least squares regression to be upwardly biased. By eliminating the selection effect, this study more precisely estimates the agglomeration effect, which can be applied to cost–benefit and cost-effectiveness analyses of urban and industrial policies.
773 0 _08877
_917103
_dLondon Pion Ltd. 2010
_tEnvironment and planning A
_x1472-3409
856 _uhttps://doi.org/10.1177/0308518X19868467
942 _2ddc
_cEJR
999 _c14400
_d14400