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Clustering Concepts into Higher-Level Entities using Neural Network-like Structures

机译:使用神经网络状结构将概念纳入更高级别的实体

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Previous work has described linking mechanisms and how they might be used in a cognitive model that could even begin to think [1][2][3]. One key problem is enabling the system to autonomously form its own concept structures from the information that is presented. This is particularly difficult if the information is unstructured, for example, individual concept values being presented in unstructured groups. This paper suggests an addition to the current model that would allow it to filter the unstructured information to form higher-level concept chains that would represent something in the real world. The new architecture also starts to resemble a traditional feedforward neural network, suggesting what future directions the research might take.
机译:以前的工作描述了链接机制以及如何在认知模型中使用它们甚至可以开始思考[1] [2] [3]。一个关键问题是使系统能够从所呈现的信息自主地形成自己的概念结构。例如,如果信息是非结构化,则特别困难,例如,在非结构化组中呈现的单个概念值。本文建议添加到当前模型的补充,这些模型将允许其过滤非结构化信息,以形成将代表现实世界中某些东西的更高级别的概念链。新架构也开始类似于传统的前馈神经网络,这表明研究可能需要的未来方向。

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