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      Frictional Unemployment on Labor Flow Networks

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          Abstract

          We develop an alternative theory to the aggregate matching function in which workers search for jobs through a network of firms: the labor flow network. The lack of an edge between two companies indicates the impossibility of labor flows between them due to high frictions. In equilibrium, firms' hiring behavior correlates through the network, generating highly disaggregated local unemployment. Hence, aggregation depends on the topology of the network in non-trivial ways. This theory provides new micro-foundations for the Beveridge curve, wage dispersion, and the employer-size premium. We apply our model to employer-employee matched records and find that network topologies with Pareto-distributed connections cause disproportionately large changes on aggregate unemployment under high labor supply elasticity.

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          Most cited references28

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          Networks in the Modern Economy: Mexican Migrants in the U. S. Labor Market

          A Munshi (2003)
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            Looking into the Black Box: A Survey of the Matching Function

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              Job Information Networks, Neighborhood Effects, and Inequality

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                Author and article information

                Journal
                01 March 2019
                Article
                1903.04954
                e5a0e856-8fd9-46d6-b9b7-c752028ff765

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                econ.GN cs.MA physics.soc-ph q-fin.EC

                General physics,Artificial intelligence
                General physics, Artificial intelligence

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