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Automated Chinese Essay Scoring using Vector Space Models

机译:矢量空间模型的自动中文散文评分

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This paper presents experiments using several vector space models in Automated Essay Scoring (AES). Firstly, we compare four different Vector Space Models (VSM) which are the Word-based Vector Space Model (W-VSM), the Weight Adapted Word-based Vector Space Model (WAW-VSM), the Latent Semantic-based Vector Space Model (LS-VSM) and the Sequence Latent Semantic-based Vector Space Model (SLS-VSM). The results show that the WAW-VSM with the addition of word relation information is better than the W-VSM, while the SLS-VSM is also better than the LS-VSM by considering the sequence information in document representation. After that, we add some statistical surface features in the experiments. With the application of Support Vector Regression (SVR), the final machine score is generated. The correlation between the machine score and the human score reaches that between two human scores in average.
机译:本文介绍了在自动作文评分(AES)中使用几种向量空间模型进行的实验。首先,我们比较了四种不同的向量空间模型(VSM),它们是基于单词的向量空间模型(W-VSM),基于权重的基于单词的向量空间模型(WAW-VSM),基于潜在语义的向量空间模型(LS-VSM)和基于序列潜在语义的向量空间模型(SLS-VSM)。结果表明,考虑到文档表示中的序列信息,添加了单词关系信息的WAW-VSM比W-VSM更好,而SLS-VSM也比LS-VSM更好。之后,我们在实验中添加一些统计表面特征。通过支持向量回归(SVR)的应用,可以生成最终的机器分数。机器分数和人类分数之间的相关性平均达到两个人类分数之间的相关性。

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