A Network Theory of Patentability

Laura G. Pedraza-Fariña, Ryan Whalen
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引用次数: 6

Abstract

Patent law is built upon a fundamental premise: only significant inventions receive patent protection while minor improvements remain in the public domain. This premise is indispensable for maintaining an optimal balance between incentivizing new innovation and providing public access to existing innovation. Despite its importance, the doctrine that performs this gate keeping role—non-obviousness—has long remained indeterminate and vague. Judicial opinions have struggled to articulate both what makes an invention significant (or non-obvious) and how to measure non-obviousness in specific cases. These difficulties are due in large part to the existence of two clashing theoretical frameworks, cognitive and economic, that have vied for prominence in justifying non-obviousness. Neither framework, however, has generated doctrinal tests that can be easily and consistently applied. This Article draws on a novel approach—network theory—to answer both the conceptual question (what is a non-obvious invention?) and the measurement question (how do we determine non-obviousness in specific cases?). First, it shows that what is missing in current conceptual definitions of non-obviousness is an underlying theory of innovation. It then supplies this missing piece. Building upon insights from network science, we model innovation as a process of search and recombination of existing knowledge. Distant searches that combine disparate or weakly-connected portions of social and information networks tend to produce high-impact new ideas that open novel innovation trajectories. Distant searches also tend to be costly and risky. In contrast, local searches tend to result in incremental innovation that is more routine, less costly and less risky. From a network theory perspective, then, the goal of non-obviousness should be to reward, and therefore to incentivize, those risky distant searches and recombinations that produce the most socially significant innovations. By emphasizing factors specific to the structure of innovation—namely the risks and costs of the search and recombination process—a network approach complements and deepens current economic understandings of non-obviousness. Second, based on our network theory of innovation, we develop an empirical, algorithmic measure of patentability—what we term a patent’s “network non-obviousness score (NNOS).” We harness data from U.S. patent records to calculate the distance between the technical knowledge areas recombined in any given invention (or patent), allowing us to assign each patent a specific NNOS. We propose a doctrinal framework that incorporates an invention’s NNOS to non-obviousness determinations both at the examination phase and during patent litigation. Our use of network science to develop a legal algorithm is a methodological innovation in law, with implications for broader debates about computational law. We illustrate how differences in algorithm design can lead to different non-obviousness outcomes, and discuss how to mitigate the negative impact of black box algorithms.
可专利性网络理论
专利法建立在一个基本前提之上:只有重要的发明才能获得专利保护,而微小的改进仍留在公共领域。这个前提对于在激励新的创新和向公众提供现有创新之间保持最佳平衡是必不可少的。尽管它很重要,但履行这种守门角色的原则——非显而易见性——长期以来一直是不确定和模糊的。司法意见一直在努力阐明是什么使一项发明具有重大意义(或非显而易见性),以及如何在具体案件中衡量非显而易见性。这些困难在很大程度上是由于两个相互冲突的理论框架的存在,即认知和经济,它们在为非显而易见性辩护方面争夺突出地位。然而,这两个框架都没有产生可以容易和一致地应用的理论检验。本文采用了一种新颖的方法——网络理论——来回答概念问题(什么是非显而易见的发明?)和测量问题(我们如何在特定情况下确定非显而易见性?)首先,它表明在当前的非显而易见性概念定义中缺少的是一个潜在的创新理论。然后它会补充缺失的部分。基于网络科学的见解,我们将创新建模为搜索和重组现有知识的过程。将社会和信息网络中完全不同或连接薄弱的部分结合起来的远程搜索往往会产生高影响力的新想法,从而开辟新的创新轨迹。远程搜索也往往是昂贵和危险的。相比之下,本地搜索往往会带来更常规、成本更低、风险更小的渐进式创新。因此,从网络理论的角度来看,非明显性的目标应该是奖励,从而激励那些产生最具社会意义的创新的冒险的远程搜索和重组。通过强调创新结构的特定因素,即寻找和重组过程的风险和成本,网络方法补充并深化了当前对非显而易见性的经济学理解。其次,基于我们的创新网络理论,我们开发了一种经验的、算法的可专利性度量——我们称之为专利的“网络非显而易见性得分(NNOS)”。我们利用来自美国专利记录的数据来计算任何给定发明(或专利)中重组的技术知识领域之间的距离,从而允许我们为每个专利分配特定的NNOS。我们提出了一个理论框架,在审查阶段和专利诉讼期间将发明的NNOS纳入非显而易见性确定。我们使用网络科学来开发法律算法是法律方法论上的创新,对计算法的更广泛辩论具有启示意义。我们说明了算法设计的差异如何导致不同的非明显性结果,并讨论了如何减轻黑盒算法的负面影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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