基于依赖加权语义相似度模型的自动评分系统

Liang Chen, Yajun Liu
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引用次数: 2

摘要

传统的自动评分系统使用单词之间的语义相似度和单词的权重来计算学生答案与标准答案之间的语义相似度。它不考虑词序或句法信息,这可以改善知识表示,从而提高性能。本文提出了一种基于依赖关系的加权语义相似度模型,该模型在依赖关系分析的基础上考虑了句法关系,并结合了基于词的信息。实验表明,与传统的基于词的加权语义相似度模型相比,基于依赖的加权语义相似度模型明显提高了准确率。该方法对语法-语义知识表示的判别也优于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Scoring System Using Dependency-Based Weighted Semantic Similarity Model
Traditionally, automated scoring system uses semantic similarity between words and the weight of words to calculate semantic similarity between student's answer and standard answer. It doesn't consider the word-order or syntactic information, which can improve the knowledge representation and therefore lead to better performance. This article presents a novel approach called dependency-based weighted semantic similarity model which takes syntactic relations into account and incorporates word-based information in addition to dependency parsing. The experiment shows that compared with traditional word-based weighted semantic similarity model, the dependency-based weighted semantic similarity model improves the precision obviously. It also provides better discrimination of syntactic-semantic knowledge representation than the traditional one.
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