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Retrieving Sparser Fuzzy Cognitive Maps Directly from Categorical Ordinal Dataset using the Graphical Lasso Models and the MAX-threshold Algorithm

机译:使用图形套索模型和MAX阈值算法直接从分类有序数据集中检索稀疏模糊认知图

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Learning FCM models from data without any a priori knowledge and expert intervention remains a considerable problem. This research study utilizes a fully data-based learning method (the glassoFCM) for automatic design of Fuzzy Cognitive Maps (FCM) using large ordinal dataset based on the efficient capabilities of graphical lasso (glasso) models. Therefore, glasso represents its structure as a sparser graph, while maintaining a high likelihood, by producing an adjacent weighted matrix, where relationships are expressed by conditional independences. By minimizing the negative log-likelihood indicates that the model fits better to the data under the assumption that the observed data are the most likely data. The principle questioning is which of the observed concepts is the appropriate to trigger the remaining concepts in the map in order to create the glassoFCMs and obtain reasonable results. The answer derives from the FCM structure analysis based on the strength centrality indices. Moreover, the MAX-threshold algorithm based on the FCM scenario analysis is proposed in order to prune edges and retrieve sparser graphs. This algorithm shrinks the meaningless weights of the FCM, without affecting significantly the outcomes in scenario analysis. The whole approach was implemented in a business intelligence problem of evaluating the attractiveness of Belgian companies.
机译:在没有任何先验知识和专家干预的情况下从数据中学习FCM模型仍然是一个很大的问题。这项研究利用图形化套索(glasso)模型的有效功能,利用大型序数数据集,利用完全基于数据的学习方法(glassoFCM)自动设计模糊认知图(FCM)。因此,glasso通过生成相邻的加权矩阵(其关系由条件独立性表示),在保持高可能性的同时,将其结构表示为稀疏图。通过最小化负对数似然率,可以表明模型在假设观测数据为最可能数据的情况下更适合数据。原则上的质疑是,哪个观察到的概念适合触发地图中的其余概念,以便创建glassoFCM并获得合理的结果。答案来自基于强度集中度指标的FCM结构分析。此外,提出了一种基于FCM场景分析的MAX阈值算法,以对边缘进行修剪和提取稀疏图。该算法缩小了FCM的毫无意义的权重,而不会显着影响场景分析中的结果。整个方法是在评估比利时公司吸引力的商业智能问题中实施的。

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