Jason Jianjun Wu’s scientific contributions

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Publications (1)


Subsidizing research programs with "If" and "When" uncertainty in the face of severe informational constraints
  • Article

July 2016

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22 Reads

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4 Citations

The RAND Journal of Economics

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Jason Jianjun Wu

We study government optimal subsidy policies for research programs in the face of servere information asymmetry---when firms have private information about the likelihood of project viability but the government cannot form a unique prior belief about this likelihood. The paper makes two contributions. First, we show that the way in which R&D is subsidized matters. Under both monopoly R&D (i.e., a single firm conducts R&D in isolation) and R&D competition, different types of subsidies (e.g., earmarked, unrestricted subsidies, and pure matching subsidies) have significantly different effects on firms' R&D investment incentives. Second, we show that a simple subsidy scheme works even when the government is unable to form a unique prior belief about the firm's private information on project viability. If the shadow cost of public funds is zero, under monopoly R&D, there exists a pure matching subsidy that induces the firm to follow the first-best R&D policy irrespective of its prior beliefs about the viability of the project, meaning it is a (belief-free) ex post equilibrium policy; under R&D competition, the first-best outcome can also be achieved through a simple combination of a matching subsidy and an unrestricted subsidy. If the shadow cost of public funds is positive, an ex post equilibrium in general does not exist either under monopoly or competition. We then consider two alternative policy decision criteria that are appropriate for belief-free games: rationalizability and max-min criteria. We argue that the max-min criteria is preferable in our context, and by way of doing so establish that the set of max-min subsidy policies under either monopoly or competitive R&D consists entirely of simple pure matching subsidies. We further establish that allowing firms to form an R&D consortium reduces the matching rate for the highest max-min subsidy, suggesting that cooperative R&D has the potential to economize on the shadow costs of public funding of subsidies.

Citations (1)


... 6 When the quality of the risky option 3 See, for example, Besanko and Wu (2013), Akcigit and Liu (2016), or Das and Klein (2020). Besanko, Tong, and Wu (2018) used the exponential bandits framework to analyze optimal subsidies for R&D. 4 We are committing a slight abuse of terminology here by referring to the "welfare-optimal," "averagepayoff maximizing" or "best" equilibrium, which we shall maintain throughout this paper. HKR in fact analyze a setting in continuous time in which actions are frozen for small intervals of time of length > 0. They show that, for small enough , there exists a perfect Bayesian equilibrium (PBE), which happens to be strongly symmetric, with payoffs that, as → 0, converge to the payoff from all players playing risky above the single-agent threshold and safe below it, and that it is not possible to achieve higher limit average PBE payoffs. ...

Reference:

Bandits in the lab
Subsidizing research programs with "If" and "When" uncertainty in the face of severe informational constraints
  • Citing Article
  • July 2016

The RAND Journal of Economics