Equilibrium analysis for linear and nonlinear aggregation in network models: applied to mental model aggregation in multilevel organisational learning

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information and Telecommunication Pub Date : 2022-05-20 DOI:10.1080/24751839.2022.2043594
Gülay Canbaloglu, J. Treur
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引用次数: 1

Abstract

ABSTRACT In this paper, equilibrium analysis for network models is addressed and applied in particular to a network model of multilevel organisational learning. The equilibrium analysis addresses properties of aggregation characteristics and connectivity characteristics of a network. For aggregation characteristics, it is shown how certain classes of nonlinear functions enable equilibrium analysis of the emerging dynamics within the network like linear functions do. For connectivity characteristics, by using a form of stratification for the network's strongly connected components, it is shown how equilibrium analysis results can be obtained relating equilibrium values in any component to equilibrium values in (independent) components without incoming connections. In addition, concerning aggregation characteristics, two specific types of nonlinear functions for aggregation in networks (weighted euclidean functions and weighted geometric functions) are analysed. It is illustrated in detail how by using certain function transformations also methods for equilibrium analysis based on a symbolic linear equation solver, can be applied to make predictions about equilibrium values for them. All these results are applied to a network model for organisational learning. Finally, it is analysed in some depth how the function transformations applied can be described by the more general notion of function conjugate relation, also often used for coordinate transformations.
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网络模型中线性和非线性聚合的均衡分析:应用于多层次组织学习中的心智模型聚合
本文讨论了网络模型的均衡分析,并将其特别应用于多层次组织学习的网络模型。均衡分析主要研究网络的聚合特性和连通性特性。对于聚合特性,它显示了某些类别的非线性函数如何能够像线性函数一样对网络中出现的动态进行平衡分析。对于连通性特征,通过对网络的强连接组件使用分层形式,展示了如何获得平衡分析结果,将任何组件中的平衡值与没有传入连接的(独立)组件中的平衡值相关联。此外,针对网络的聚集特性,分析了两类特殊的非线性聚集函数(加权欧几里得函数和加权几何函数)。详细说明了如何利用某些函数变换和基于符号线性方程解算器的平衡分析方法来预测它们的平衡值。所有这些结果都应用于组织学习的网络模型。最后,深入分析了如何用更一般的函数共轭关系概念来描述所应用的函数变换,函数共轭关系也常用于坐标变换。
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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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