模糊答案集规划在深度神经-符号混合体系结构中的应用

Sandip Paul, K. Ray, D. Saha
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引用次数: 1

摘要

用于事件检测的混合深度神经-符号架构在后端使用深度神经网络执行低级推理,并使用符号逻辑模块执行高级认知推理。目前已知的混合体系结构使用的是经典的回答集编程(ASP),它无法进行具有不确定性的模糊推理。此外,这些系统不会从可用数据中提取新的规则。另一方面,有一些神经模糊系统可以利用高斯受限玻尔兹曼机(GRBM)从数据中提取模糊规则。这两个方面应该融合在一起,以实现类似人类的智能推理和从环境中学习。但是,这种集成的成功取决于所选择的逻辑系统,该逻辑系统既可以支持具有不确定性的模糊推理,也可以支持从GRBM中提取的知识。本文探讨了区间值模糊逻辑规划在这方面的可行性。本工作主要从逻辑编程的角度对理论方面进行研究。
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Application of Fuzzy Answer set Programming in Hybrid Deep Neural-Symbolic Architecture
Hybrid deep neural-symbolic architecture for event-detection employs a deep neural network at the back-end to perform low-level reasoning and a symbolic logical module to perform high-level cognitive reasoning. The currently known hybrid architectures use classical Answer Set Programming(ASP), which is unable to perform fuzzy reasoning with uncertainty. Moreover these systems don’t extract new rules from the available data. On the other hand, there are neuro-fuzzy systems that can extract fuzzy rules from data by means of Gaussian Restricted Boltzman Machines (GRBM). Both the aspects should be merged together to achieve human-like intelligent reasoning and learning from environment. But the success of such an integration depends upon the chosen logical system, that can support fuzzy reasoning with uncertainty, as well as, can support the extracted knowledge from GRBM. This work investigates the feasibility of using interval-valued fuzzy logic programming for this purpose. This work focuses on the theoretical aspects from logic programming perspective.
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