Research on automatic evaluation algorithm of subjective questions based on vector space model and synonym lexical forest

Bo Yang, Qiqi Wu
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Abstract

Word2vec word vector algorithm and Doc2vec text vectoring algorithm calculate the similarity between words and between texts from the perspective of vector space without considering the semantic similarity between texts. Thus, in this paper, an automatic evaluation algorithm is proposed to combine semantic similarity based on synonym lexical forest and text similarity based on vector space. Meanwhile, Sentiment analysis was used to obtain the emotional score of the reference answers and students' answers in the subjective questions. Finally, the final score of students' answers was obtained by combining text similarity and emotion scores. In this paper, logistics professional education is the experimental object of the experiment. The experimental results show that the algorithm has achieved good scoring results.
基于向量空间模型和同义词词汇森林的主观问题自动评价算法研究
Word2vec词向量算法和Doc2vec文本向量算法从向量空间的角度计算词与文本之间的相似度,而不考虑文本之间的语义相似度。为此,本文提出了一种基于同义词词汇森林的语义相似度与基于向量空间的文本相似度相结合的自动评价算法。同时,运用情感分析方法获得参考答案和学生主观问题答案的情感得分。最后,结合文本相似度和情感得分,得出学生答案的最终得分。本文以物流专业教育为实验对象进行实验。实验结果表明,该算法取得了较好的评分效果。
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