辅助教学过程的子符号知识抽取环境

A. Cristea, Toshio Okamoto
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引用次数: 0

摘要

本研究的目的是建立一个整合的环境,在教育过程中作为辅助。当我们处理非结构化知识时,获取对教学过程有用的信息是非常困难的。神经网络可以存储亚符号知识,但直到最近,人们还认为它只能以“黑盒子”的形式存储。从神经网络中提取知识是一个相对较新的领域,它试图减少这些缺点,并在子符号知识和符号知识之间架起一座桥梁。由于教学过程只需要符号知识,我们认为这是教师通过将领域理论的符号知识与从存储在基于示例训练的神经网络中的经验子符号知识中提取的规则相结合来显着改善其教学材料和/或风格的机会。为此,我们开发了一种神经网络的子符号知识提取环境来辅助教学过程,并建立了一个教学证券交易开发的研究案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-symbolic knowledge extraction environment for teaching process assistance
We aim with this research is to build an integrated environment to serve as an assistant in the educational process. When we deal with unstructured knowledge, getting of useful information for the teaching process is very difficult. Neural networks can store subsymbolic knowledge, but until recently it was believed to be only in a "black-box" format. Knowledge extraction from NNs is a relatively new field, which tries to reduce these disadvantages and build a bridge between subsymbolic and symbolic knowledge. As the teaching process requires only symbolic knowledge, we believe this to be a chance for teachers to significantly improve their teaching materials and/or style by combining the symbolic knowledge of the domain theory with the rules extracted from the empirical subsymbolic knowledge stored in NNs trained on examples. Therefore, we developed a neural network's subsymbolic knowledge extraction environment for the teaching process assistance and also built a study case of teaching stock exchange developments.
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