The Darwinian Returns to Scale

经济 垄断竞争 回归规模 配置效率 福利 微观经济学 竞赛(生物学) 补贴 规模经济 不完全竞争 货币经济学 生产(经济) 垄断 市场经济 生态学 生物
作者
David Baqaee,Emmanuel Farhi,Kunal Sangani
出处
期刊:The Review of Economic Studies [Oxford University Press]
卷期号:91 (3): 1373-1405 被引量:4
标识
DOI:10.1093/restud/rdad061
摘要

Abstract How does an increase in market size, say due to globalization, affect welfare? We study this question using a model with monopolistic competition, heterogeneous markups, and fixed costs. We characterize changes in welfare and decompose changes in allocative efficiency into three different effects: (1) reallocations across firms with heterogeneous price elasticities due to intensifying competition, (2) reallocations due to the exit of marginally profitable firms, and (3) reallocations due to changes in firms’ markups. Whereas the second and third effects have ambiguous implications for welfare, the first effect, which we call the Darwinian effect, always increases welfare regardless of the shape of demand curves. We nonparametrically calibrate demand curves with data from Belgian manufacturing firms and quantify our results. We find that mild increasing returns at the microlevel can catalyze large increasing returns at the macrolevel. Between 70 and 90% of increasing returns to scale come from improvements in how a larger market allocates resources. The lion’s share of these gains are due to the Darwinian effect, which increases the aggregate markup and concentrates sales and employment in high-markup firms. This has implications for policy: an entry subsidy, which harnesses Darwinian reallocations, can improve welfare even when there is more entry than in the first best.

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