Affiliation:
1. Hebei Vocational University of Technology and Engineering, Xing Tai, Hebei 054000, China
Abstract
The rapid development of Internet of things technology provides robust conditions for building a perfect intelligent campus. A visual teaching question answering system is essential for creating a smart campus, significantly improving education quality. However, the accuracy of the existing teaching question answering system is not high. To solve this problem, this paper proposes a visual teaching system based on a knowledge map. The system mainly includes two parts: problem processing and answer search. In the part of problem processing, combined with the pretraining language model, a new model framework is constructed to deal with the problem of entity reference recognition, entity link, and relationship extraction. By setting three kinds of classification labels, the problem is divided into simple, chain, and multientity problems. Different solutions are given to the above three classification problems in the answer search part. The experimental results show that the answer accuracy of this system is higher than other comparison methods.
Funder
Research on the Construction of Civil Construction Specialty Group in Higher Vocational Colleges Based on Intelligent Construction
Subject
General Engineering,General Mathematics
Cited by
1 articles.
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