三层概念网络的递归神经网络分类器及性能评价

Md. Khalilur Rhaman, Tsutomu Endo
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引用次数: 5

摘要

对话中的语境分析是一个难题。本文采用三层存储结构来解决这一难题,我们称之为三层概念网络(TLCN)。这个高效的网络通过情景记忆、话语记忆和基础记忆来模拟人脑。使用扩展的案例结构框架来表示知识。知识库是通过收集目标系统的信息和话语来构建的。这些知识在每次对话之后都会更新。引入了递归神经网络分类器对目标系统的知识进行分类。这个系统原型是基于医患对话的。该系统原型的疾病分类准确率达到78%。疾病识别的准确性取决于疾病的数量和话语的数量。并对该性能评价进行了详细讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent neural network classifier for Three Layer Conceptual Network and performance evaluation
Contextual analysis in dialog is a hard problem. In this paper three layers memory structure is adopted to address the challenge which we refer to as three layer conceptual network (TLCN). This highly efficient network simulates the human brain by episodic memory, discourse memory and ground memory. An extended case structure framework is used to represent the knowledge. The knowledge database is constructed by the collection of target system information and utterances. This knowledge is updated after every dialog conversation. A Recurrent Neural Network classifier is also introduced for classifying the knowledge for the target system. This system prototype is based on doctor-patients dialogs. 78% disease classification accuracy is observed by this system prototype. Disease identification accuracy is depending on number of disease and number of utterances. This performance evaluation is also discussed in details.
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