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Three-term relation neuro-fuzzy cognitive maps

机译:三术语关系神经模糊认知地图

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In this paper, we propose a novel approach to modeling using fuzzy cognitive maps, which we refer to as the Three-Term Relation Neuro-Fuzzy Cognitive Map or simply the TTR NFCM. The proposed method is mostly suited to model complex nonlinear technical systems with dynamic internal characteristics. With this method we aim to solve some of the most critical problems of the conventional fuzzy cognitive maps. We target two of these problems by hybridization with artificial neural networks. First of them is a linear nature of relations between the concepts. The second is a lack of mutual dependence between the relations connecting to the same concept. Finally, we tackle a problem of relation dynamics using an inspiration from the control engineering. While focusing on bringing these advanced additional methods to the design of cognitive maps, we also aim to keep the degree of dependency on expert knowledge on the same level as with the conventional fuzzy cognitive maps. We achieve this by utilizing the machine learning methods. However, since the proposed method is heavily dependent on automated data-driven learning, it is suitable mainly for systems which are well observable and can produce sufficient training datasets.
机译:在本文中,我们提出了一种利用模糊认知地图建模的新方法,我们将其称为三级关系神经模糊认知地图或简单的TTR NFCM。所提出的方法主要适用于具有动态内部特性的复杂非线性技术系统。通过这种方法,我们的目标是解决传统模糊认知地图的一些最关键的问题。我们通过与人工神经网络杂交来定位两个问题。其中首先是概念之间关系的线性性质。第二个是连接到同一概念的关系之间的缺乏相互依赖。最后,我们使用控制工程的灵感来解决关系动态的问题。虽然专注于将这些先进的额外方法带到认知地图的设计,但我们还旨在保留与传统模糊认知地图相同的专家知识的依赖程度。我们通过利用机器学习方法来实现这一目标。然而,由于所提出的方法严重依赖于自动数据驱动的学习,因此它主要适用于可观察到的系统并且可以产生足够的训练数据集。

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