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Leveraging Large Language Models for Compliance and Productivity: Economic Implications of AI Adoption in the U.S. Small Business Sector

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  • You, Siqi

Abstract

This paper investigates the economic implications of adopting Large Language Models (LLMs) to automate compliance and administrative functions within the U.S. small business sector. Small and medium-sized enterprises (SMEs) currently face disproportionate regulatory burdens that consume approximately 19 percent of operating budgets and cost over $50,000 per employee annually. By transforming compliance from a labor-intensive cost center into a scalable digital process, LLM-enabled automation offers a structural remedy to the SME productivity gap. The analysis estimates that widespread adoption could reallocate $50 to $90 billion annually from non-productive administrative tasks to high-value productive uses. Beyond immediate cost savings, the paper demonstrates that this technological shift promotes capital deepening, as firms redirect resources from recurring operational expenses toward long-term intangible capital formation. The study concludes that supported by adaptive federal policies and deregulation, AI-driven compliance automation will serve as critical economic infrastructure, enhancing total factor productivity, fostering entrepreneurship, and strengthening U.S. competitiveness in global markets.

Suggested Citation

  • You, Siqi, 2026. "Leveraging Large Language Models for Compliance and Productivity: Economic Implications of AI Adoption in the U.S. Small Business Sector," International Journal of Humanities and Social Science, Pinnacle Academic Press, vol. 2(1), pages 1-7.
  • Handle: RePEc:dba:ijhssa:v:2:y:2026:i:1:p:1-7
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