远离NK模型的局部峰值:引入结构化交互景观网络

J. Applegate, G. Hoetker
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引用次数: 0

摘要

使用NK适应度景观建模公司搜索行为的创新已有20年历史,但尽管这种方法具有潜力,但其采用仍然很少。这可能是由于三个原因。首先,许多当前感兴趣的问题并不适用于经典的NK模型公式,特别是那些涉及公司内部相互作用结构的问题。其次,对于较大N值的崎岖景观是不可能概念化的。第三,产生大规模的景观可能需要大量的计算。我们引入并扩展了两项创新,即适应度景观的NM参数化表述和景观的LON映射,以解决这些问题。交互规范的最大阶~(NM)极大地简化了景观的计算需求,并提供了一种直接、透明和一致的方法来定义不同程度交互~(K)的景观内的交互结构。我们通过引入结构化交互NM~(SINM)规范来扩展NM规范。景观的局部最优网络~(LON)映射通过整个景观的有意义的可视化提供了对景观结构的洞察,以及允许景观之间相关比较的可搜索性指标。通过结合这些创新,我们可以直接构建景观中的相互作用,然后描述这种结构如何影响景观的可搜索性特征。我们证明了这些可搜索性特征在结构化和随机景观中是不同的,并且这些特征实际上代表了简单迭代搜索算法在搜索易用性方面的差异。最后,我们考虑了基于智能体的模型在战略管理中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving Off NK Models' Local Peak: Introducing Structured Interaction Landscape Networks
The innovation of modeling firm search behavior using NK fitness landscapes is twenty years old, but despite the potential of this method its adoption remains sparse. This is likely be due to three reasons. First, many questions of current interest are not amenable to the classic NK model formulation, especially those involving the structure of interactions within firms. Second, rugged landscapes for larger N values are impossible to conceptualize. Third, generating landscapes of significant scale can be computationally intensive. We introduce and extend two innovations, the NM parametric formulation of fitness landscapes and the LON mapping of landscapes, that resolve these issues. The maximal order of interaction specification~(NM) greatly simplifies the landscape computational requirements as well as provides a straightforward, transparent and consistent method of defining interaction structure within a landscape with varying degrees of interaction~(K). We extend the NM specification by introducing the Structured Interaction NM~(SINM) specification. The local optima network~(LON) mapping of a landscape provides insights into landscape structure through a meaningful visualization of the entire landscape, as well as searchability metrics that allow for relevant comparisons between landscapes. By combining these innovations, we can directly structure the interactions in a landscape and then describe how this structure affects the landscape's searchability characteristics. We demonstrate that these searchability characteristics are different for structured and random landscapes, and furthermore that these characteristics actually represent differences in ease of search with a simple iterated search algorithm. We close by considering applications for the application of agent based models with strategic management.
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