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An Automatic System for Essay Questions Scoring based on LSTM and Word Embedding

机译:基于LSTM和Word嵌入的文章问题的自动系统

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Essay scoring is a significant task in education, especially online education. Manual essay scoring is a complex job, which limits the development of large-scale online education. In tradition, essays are all scored by human because computer program cannot understand what text means. Recent advance of natural language processing technology in artificial intelligence provides a way to score essays automatically. In our study, we create an automatic essay scoring (AES) system by using Long-Short Term Memory (LSTM) network and word embedding. We show an automated system that can rate essays in electronic text. We combine manually crafted features and Word2Vec embedding in training the model, which makes it more interpretable. We carefully tune the hyperparameter to improve the precision of our model. The LSTM network reaches a quadratic weighted Kappa score (QWK) of 0.95 ± 0.01, which outperforms many other rating systems. The AES system we design can greatly improve the efficiency of online education.
机译:作文评分是在教育显著的任务,尤其是网络教育。手册作文评分是一项复杂的工作,这限制了大型网络教育的发展。传统上,文章都是由人的进球,因为计算机程序无法理解文本的手段。在人工智能的自然语言处理技术的最新进展提供了一种自动评分文章。在我们的研究中,我们利用长短期记忆(LSTM)网络和字嵌入创建一个自动作文评分(AES)系统。我们发现一个自动化系统,可以在打分电子文本的文章。我们结合手工制作的特点和Word2Vec培训的模式,这使得它更可解释的嵌入。我们仔细地调整超参数,以提高我们的模型的精度。所述LSTM网络达到0.95±0.01的二次加权卡伯评分(QWK),其性能优于许多其他评级系统。该AES系统,我们的设计可以大大提高网络教育的效率。

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