Exploring Neural Turing Machines Applicability in Neural-Symbolic Decision Support Systems

A. Demidovskij
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引用次数: 1

Abstract

The task of building hybrid decision support systems that combine symbolic and connectionist approaches is actual and challenging. In particular, decision support systems operate with symbolic structures that describe the problem situation, stakeholders, assessment criteria, etc. Integrating connectionist approaches into certain parts of the decision-making process bring robustness, fixed response speed and ability to generalize. This paper examines Neural Turing Machines - a special case of Memory-Augmented Neural Networks - and demonstrates that such an architecture can be integrated into the Decision Support Systems. It was also shown that Neural Turing Machine can solve arithmetic sum task for numbers represented as binary vectors of length 10.
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探索神经图灵机在神经符号决策支持系统中的应用
构建混合决策支持系统的任务结合了符号和连接主义的方法是实际和具有挑战性的。特别是,决策支持系统使用描述问题情况、利益相关者、评估标准等的符号结构进行操作。将连接主义方法整合到决策过程的某些部分,可以带来鲁棒性、固定的反应速度和泛化能力。本文研究了神经图灵机——记忆增强神经网络的一个特例——并证明了这种体系结构可以集成到决策支持系统中。结果表明,神经图灵机可以解决长度为10的二进制向量的算术和问题。
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