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Conflict Modelling and Knowledge Extraction using Computational Intelligence Methods

机译:使用计算智能方法冲突建模和知识提取

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This paper investigates the level of transparency of the Takagi-Sugeno neuro-fuzzy model and the Neural Network model by applying them to conflict management, an application which is concerned with causal interpretations of results. The data set used in this investigation is the Militarised Interstate Disputes (MID) dataset obtained from the correlates of war project. In the this work, the neural network model is trained to predict conflict using the Bayesian framework. It is found that the neural network is able to forecast conflict with an accuracy of 77.30%. Knowledge from the neural network model is then extracted using the Automatic Relevance Determination method and by performing a sensitivity analyis. The Takagi-Sugeno Neuro-fuzzy model is optimised to forecast conflict giving an accuracy 80.36%. Knowledge from the Takagi-Sugeno neuro-fuzzy model is extracted by interpreting the model''s fuzzy rules and their outcomes. It is found that both models offer some transparency which helps in understanding conflict management.
机译:本文通过将它们应用于冲突管理,调查Takagi-Sugeno神经模糊模型和神经网络模型的透明度水平,这是一个涉及结果的因果解释的应用程序。本研究中使用的数据集是从战争项目相关获得的军事化州际争端(中间)数据集。在这项工作中,神经网络模型训练以预测使用贝叶斯框架的冲突。结果发现神经网络能够预测精度为77.30%的冲突。然后使用自动相关性确定方法和通过执行灵敏度分析来提取来自神经网络模型的知识。 Takagi-Sugeno神经模糊模型经过优化,以预测矛盾,准确性为80.36%。通过解释模型的模糊规则及其结果来提取来自Takagi-Sugeno神经模糊模型的知识。结果发现,两种型号都提供了一些透明度,有助于了解冲突管理。

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