Optimal Patent Jurisprudence

S. Baker, C. Mezzetti
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引用次数: 1

Abstract

We model judicial learning about optimal patent policy. The court is infinitely lived; the plaintiff and defendant are short lived. Litigated cases provide the court with information about the optimal rule. Different cases provide different sorts of information. Opinions influence the stream of future cases likely to be litigated and, as a result, change the flow of information to the court. In structuring opinions, courts make decisions whether to learn fast or slow. We have three main results. First, patent law will stabilize even if the court places zero value on the "predictability" of legal rules. Second, path dependence of law is a rare outcome. It occurs only when the court stops learning and decides that the error costs (the losses from some cases going the wrong way) are lower than the decision costs. Finally, the law can be optimally incoherent in the short run. The court will pay lip service to prior holdings, while dramatically altering the legal landscape. Patent opinion incoherence, which is often the subject of much scholarly critique, makes sense because it facilitates future learning from a population of cases most important to the court for policy-making.
最优专利法学
我们建立了关于最优专利政策的司法学习模型。宫廷是无限存在的;原告和被告的生命都很短暂。诉讼案件为法院提供了关于最优规则的信息。不同的案例提供了不同种类的信息。意见会影响未来可能被提起诉讼的案件,从而改变流向法院的信息。在构建意见的过程中,法院决定是快速学习还是缓慢学习。我们有三个主要结果。首先,即使法院不重视法律规则的“可预测性”,专利法也会稳定下来。其次,法律的路径依赖是一种罕见的结果。只有当法院停止学习并认定错误成本(一些案件走错了方向的损失)低于判决成本时,才会发生这种情况。最后,法律在短期内可能是最佳的不连贯的。法院将口头上支持先前持有的股份,同时戏剧性地改变法律格局。专利意见的不一致性,经常是许多学术批评的主题,是有道理的,因为它有助于未来从对法院决策最重要的案例中学习。
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