Automatically Combining Conceptual Models Using Semantic and Structural Information

Alexander J. Freund, P. Giabbanelli
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引用次数: 1

Abstract

A conceptual model is a necessary precursor to a simulation model. It defines the problem space by listing relevant concepts and it identifies salient mechanisms by specifying which concepts are related. In this paper, we focus on conceptual models expressed as causal or ‘cognitive’ maps, in which concepts form nodes and their relationships are directed, weighted edges specifying causal strengths. When modeling complex social systems, participants may provide their perspectives through individual causal maps. To create a simulation model, these maps need to be aggregated into a coherent conceptual model. Two challenges arise: nodes may have different names although participants ascribed the same meanings (i.e., linguistic variability) and disagreements on causal strengths need to be reconciled. Although other fields have long proposed algorithms to aggregate knowledge bases (e.g., ontology matching), there is a paucity of solutions for causal maps. In this paper, we propose a solution for causal maps that leverages recent advances in graph matching. We demonstrate the feasibility and potential of our approach on a case study with $n=22$ maps.
基于语义和结构信息的概念模型自动组合
概念模型是仿真模型的必要前提。它通过列出相关的概念来定义问题空间,并通过指定哪些概念是相关的来确定重要的机制。在本文中,我们专注于表达为因果或“认知”地图的概念模型,其中概念形成节点,它们的关系是定向的,加权边缘指定因果优势。当建模复杂的社会系统时,参与者可能会通过个人因果图提供他们的观点。为了创建仿真模型,需要将这些映射聚合到一个连贯的概念模型中。出现了两个挑战:节点可能有不同的名称,尽管参与者赋予相同的含义(即语言可变性),并且需要协调对因果优势的分歧。尽管其他领域早就提出了聚合知识库的算法(例如,本体匹配),但缺乏因果图的解决方案。在本文中,我们提出了一种利用图匹配最新进展的因果图的解决方案。我们在$n=22$映射的案例研究中证明了我们的方法的可行性和潜力。
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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