自动作文评分(AES);语义分析启发的机器学习方法:本研究提出了一个使用语义分析和机器学习的自动作文评分系统

Ahsan Ikram, Bill Castle
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引用次数: 3

摘要

随着人工智能(AI)的进步,“自动论文评分”(AES)系统近年来变得越来越普遍。本研究提出了一个扩展的Coh-Metrix算法AES,重点是特征列表。技术特征,如指称衔接,词汇多样性和句法复杂性进行了评估。此外,它提出了使用四种新的语义度量,包括估计文章及其摘要之间的主题重叠。使用神经网络的原型实现用于测试新提出的AES系统的单个性能和比较性能。结果表明,在原有的Coh-Metrix算法的基础上,已有的研究结果有了很大的改进;从91%的相邻精度,到97.5%的相邻精度(QWK为0.822)。这表明,新的功能和拟议的系统有可能提高作文评分,将是一个很好的领域,进一步研究
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Essay Scoring (AES); A Semantic Analysis Inspired Machine Learning Approach: An automated essay scoring system using semantic analysis and machine learning is presented in this research
With the advancements in Artificial Intelligence (AI), ‘Automated Essay Scoring’ (AES) systems have become more and more prevalent in recent years. This research proposes an extension to the Coh-Metrix algorithm AES, with a focus on feature lists. Technical features, such as, referential cohesion, lexical diversity, and syntactic complexity are evaluated. Furthermore, it proposes the use of four novel semantic measures, including estimating the topic overlap between an essay and its brief. A prototype implementation, using neural networks, is used to test the individual and comparative performance of the newly proposed AES system. The results show a considerable improvement on the results obtained in the existing research for the original Coh-Metrix algorithm; from an adjacent accuracy of 91%, to an adjacent accuracy of 97.5% (and a QWK of 0.822). This suggests that the new features and the proposed system have the potential to improve essay grading and would be a good area for further research
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