Optimal Subsidy Policy for Innovation: Technology Push and Demand Pull
成果类型:
Article
署名作者:
Chung, Hakjin; Ahn, Hyun-soo; Lee, Myeonghun; Kim, Sang Won
署名单位:
Korea Advanced Institute of Science & Technology (KAIST); University of Michigan System; University of Michigan
刊物名称:
PRODUCTION AND OPERATIONS MANAGEMENT
ISSN/ISSBN:
1059-1478
DOI:
10.1177/10591478241231848
发表日期:
2024
页码:
817-831
关键词:
innovation
subsidy
technology spillover
摘要:
Government plays a critical role in developing and adopting new products with social benefits. We study how the government should mix two different subsidies-a technology-push subsidy, which awards manufacturers for cost-reducing R&D efforts, and a demand-pull subsidy, which directly rewards customers-when multiple firms compete in the presence of spillover. We develop a model with the government and two firms: The government first announces a subsidy policy, then the two firms decide R&D investments to reduce production costs and sell the products. We analyze how the optimal subsidy policy and resultant market outcomes change in the social benefit of the product and the spillover level. We find that the government should use a different subsidy policy depending on the social benefit of the product. When the social benefit is low, no subsidy should be given, letting the two firms make discretionary R&D efforts without any inducement. When the social benefit is modest, the government should only give a push subsidy and let the firms lead production adoptions with cost-reducing R&D. When the social benefit is large, the government should provide both subsidies, but the dependence on the pull subsidy increases. We also study how the spillover level influences the optimal subsidy. As knowledge spillover increases, we find that the government should increase the push subsidy to offset the losses incurred by the cost leader. We contribute to the literature by offering policy insights on how the government should design subsidies to maximize the adoption of products with social benefits.
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