Semantic Representation & Analysis (SRA) and potential applications

[视频介绍]
简介:Semantic Representation Analysis (SRA) is a general framework for vector-based semantic analysis. Within this framework, semantics of natural language are represented in the form of Induced Semantic Structure (ISS). SRA has applications in information retrieval (IR), text analysis, and intelligent tutoring systems (ITS). In this lecture, I will 1) introduce a mathematical model of SRA; 2) introduce and demonstrate a method that generates individualized domain-specific context sensitive semantic representation; 3) introduce and demonstrate learner’s characteristics curves (LCC) as local student’s model and its application in intelligent tutoring systems.
播放296 收藏
您可以试看前3分钟,观看完整视频请注册/登录
您可以试看前3分钟,观看完整视频请注册/登录

章节

相关内容

评论列表

0:
暂无评论
读完这篇文章后,您心情如何?

视频介绍

讲师:Xiangen Hu

关键词:

课程简介:Semantic Representation Analysis (SRA) is a general framework for vector-based semantic analysis. Within this framework, semantics of natural language are represented in the form of Induced Semantic Structure (ISS). SRA has applications in information retrieval (IR), text analysis, and intelligent tutoring systems (ITS). In this lecture, I will 1) introduce a mathematical model of SRA; 2) introduce and demonstrate a method that generates individualized domain-specific context sensitive semantic representation; 3) introduce and demonstrate learner’s characteristics curves (LCC) as local student’s model and its application in intelligent tutoring systems.