面向远程学习服务的基于图形的机器学习方法

A. Orsoni
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引用次数: 0

摘要

互动式学习在现代教育体系中变得越来越重要。理想情况下,学生应该能够扩展他们的知识,评估他们的进步,并从课堂外的远程位置获得反馈。本研究提出了一种基于图形的方法来模拟问答形式的文本交换的语义结构。然后提出了一种机器学习方法,该方法基于语义结构的相似性对问题和答案进行分类。由于该方法是基于图形的,因此可以识别图形之间的相似性,从而在答案之间或问题与可能的答案之间建立与上下文无关的关系/关联。通过这些方法,可以对相关的文本交流进行系统的分析和分类
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Graphically-Based Machine Learning Approach for Remote Learning Services
Interactive learning is becoming increasingly important in the modern educational system. Ideally students should be able to expand on their knowledge, assess their progress and receive feedback from a remote location, outside the classroom. This research presents a graphically-based methodology to model the semantic structure of textual exchanges in the form of question and answer (Q/A). A machine learning approach is then presented which classifies questions and answers based on the similarities of their semantic structures. Because the methodology is graphically-based, similarities between graphs can be identified to establish context-free relationships/ associations between answers, or between questions and possible answers. By these means the relevant textual exchanges can be systematically analyzed and classified
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