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Evolutionary policy targeting: towards a conceptual framework for effective policy intervention

机译:制定渐进政策:建立有效干预政策的概念框架

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This special issue reflects on innovation and industrial policy from the premise that economic growth can be based on the permanent transformation of an economic system via the emergence and/or transformation of multi-agent structures and their inherent competences and knowledge base. The process of emergence or transformation is conceived as being the result of entrepreneurial effort, or entrepreneurs reacting to external stimuli in a way that takes advantage of an evolving knowledge base. The same process, however, can be undermined by both market and institutional failures. Past research has clearly indicated the importance of institutional structures for innovation, but also that structures as they exist may not be ideal: some institutions involved in innovation may provide the wrong incentives, faulty information, or allocate insufficient resources to accomplish their goals or mandates; and they may fail to reduce uncertainty. The paper asks whether and how a targeted, co-evolutionary approach can help overcome a lack of dynamic coordination and other failures that originate in coincidence with the emergence of a complex form of industrial organisation, be it an innovation system, cluster or a new industrial sector. More specifically, it builds upon the extended industry life cycle (EILC) model and the notion of evolutionary targeting to explore the potential benefits (and drawbacks) of targeting biotechnology innovation systems (BISs).
机译:本期专刊从经济增长可以基于多主体结构及其固有能力和知识基础的出现和/或转变的经济体系的永久转变的前提出发,对创新和产业政策进行了反思。出现或转变的过程被认为是企业家努力的结果,或者企业家以利用不断发展的知识基础的方式对外部刺激做出反应。但是,市场和机构的失败都会破坏相同的过程。过去的研究清楚地表明了体制结构对创新的重要性,但是现有的结构可能并不理想:一些参与创新的机构可能会提供错误的激励措施,错误的信息或分配不足的资源来实现其目标或任务;它们可能无法减少不确定性。本文提出了一种针对性的,协同进化的方法是否以及如何帮助克服缺乏动态协调和其他失败的问题,这些失败是由于复杂的产业组织形式(创新系统,集群或新产业)的出现而引发的。部门。更具体地说,它基于扩展的行业生命周期(EILC)模型和进化目标的概念,以探索目标生物技术创新系统(BIS)的潜在利益(和弊端)。

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