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A neural-based architecture for bridging the gap between symbolic and non-symbolic knowledge modeling

机译:基于神经的体系结构,弥合符号和非符号知识建模之间的差距

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During the last decade many research efforts have been directed towards studying the relative merits of the symbolic (rooted in logic, easily understandable) and non-symbolic (numeric, difficult to understand) Artificial Intelligence (AI). Specifically, efforts have been directed towards discovering techniques to translate between knowledge available in one format to another; such as between Fuzzy Rule-based Systems (FRS) and Artificial Neural Networks (ANNs); combining both formats in a single hybrid system; such as Adaptive Neuro-Fuzzy Systems (ANFIS); or even equating both of them by introducing a new fuzzy logic operator [1]. The present paper proposes a new framework; based on a modification of the work given in [1]; that has several advantages over pure FRS, pure ANN systems and existing hybrid approaches. It is capable of producing meaningful plausible rules whether prior expert's knowledge is available or not. The theoretical foundation of this framework, as well as its application to a robot obstacle avoidance case study are discussed. Its suitability for the solution of general optimization problems is highlighted in [14].
机译:在过去的十年中,许多研究工作都致力于研究符号(扎根于逻辑,易于理解)和非符号(数字,难以理解)人工智能(AI)的相对优点。具体来说,已经致力于发现技术,以在一种格式的可用知识与另一种格式之间进行转换。例如在基于模糊规则的系统(FRS)和人工神经网络(ANN)之间;将两种格式组合在一个混合系统中;例如自适应神经模糊系统(ANFIS);甚至通过引入新的模糊逻辑运算符将它们等同起来[1]。本文提出了一个新的框架。基于对[1]中给出的工作的修改;与纯FRS,纯ANN系统和现有的混合方法相比,它具有多个优势。无论先前专家的知识是否可用,它都能产生有意义的合理规则。讨论了该框架的理论基础及其在机器人避障案例研究中的应用。在[14]中强调了它对于解决一般优化问题的适用性。

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