CREAT: Census Research Exploration and Analysis Tool

Who Gains from Creative Destruction? Evidence from High-Quality Entrepreneurship in the United States

October 2019

Working Paper Number:

CES-19-29

Abstract

The question of who gains from high-quality entrepreneurship is crucial to understanding whether investments in incubating potentially innovative start-up firms will produce socially beneficial outcomes. We attempt to bring new evidence to this question by combining new aggregate measures of local area income inequality and income mobility with measures of entrepreneurship from Guzman and Stern (2017). Our new aggregate measures are generated by linking American Community Survey data with the universe of IRS 1040 tax returns. In both fixed effects and IV models using a Bartik-style instrument, we find that entrepreneurship increases income inequality. Further, we find that this increase in income inequality arises due to the fact that almost all of the individual gains associated with increased entrepreneurship accrue to the top 10 percent of the income distribution. While we find mixed evidence for small positive effects of entrepreneurship lower on the income distribution, we find little if any evidence that entrepreneurship increases income mobility.

Document Tags and Keywords

Keywords Keywords are automatically generated using KeyBERT, a powerful and innovative keyword extraction tool that utilizes BERT embeddings to ensure high-quality and contextually relevant keywords.

By analyzing the content of working papers, KeyBERT identifies terms and phrases that capture the essence of the text, highlighting the most significant topics and trends. This approach not only enhances searchability but provides connections that go beyond potentially domain-specific author-defined keywords.
:
endogeneity, investment, growth, venture, entrepreneurial, proprietorship, entrepreneurship, entrepreneur, proprietor, economically, wealth, gdp, percentile, tax, opportunity, mobility, earn, earner, rent, taxation

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:
Internal Revenue Service, County Business Patterns, Initial Public Offering, American Community Survey, Census Bureau Disclosure Review Board, Disclosure Review Board, Adjusted Gross Income

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