Improved Automated Essay Grading System Via Natural Language Processing and Deep Learning

Samira Said Ibrahim, Essameldean F. Elfakharany, E. Hamed
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引用次数: 2

Abstract

In order to evaluate students’ total skills, educators repeatedly utilize questions based on free text to evaluate students’ total skills. Yet, when correction is done manually errors occur in addition to long time periods used, hard work, high costs and different opinions as to how to correct papers, a single paper is corrected by multiple people to avoid partiality. Thus, the smart system for automatic grading can solve the problem. Here, we present a very advanced system for grading essays automatically. This is based on Natural Language Processing and Deep Learning technologies. Thus, we need a system to automatically grade essays with low costs, less time and more accurate scores. We need thus an inelegant system for correcting essay questions on an automatic basis. We introduced a method which encodes essays in the form of sequential embeddings. We then use a long Short Term Memory Network (LSTM) working in two directions in order to register semantic information. This method also focuses concentration on each essay in order to be taught how to focus on those materials which are authentic in articles. We can also thus get a good proof of the result of prediction. This BI LSTM may be utilized also to produce neural networks which have the sequence information in the two directions: from the future to the past (backwards) or vice versa, which is called Bidirectional Long Short-Term Memory (BI-LSTM) (past to future). In order to train and test, we utilized the popular set of essays presented in the Automated Student Assessment Prize by Kaggle. The smart system used for automatic grading, in our research, predicts grades in an up-to-date manner. Moreover, the smart system for autograding we have proposed has the ability to highlight important words and sentences, evaluate the logical relationships in meaning in a sentence and gives us in advance grades that can be explained.
基于自然语言处理和深度学习的论文自动评分系统
为了评估学生的综合技能,教育者反复利用基于自由文本的问题来评估学生的综合技能。然而,当手工修改时,除了使用的时间长、工作辛苦、成本高和对如何修改论文的意见不同之外,还会出现错误,一篇论文由多个人修改,以避免偏袒。因此,智能自动评分系统可以解决这一问题。在这里,我们提出一个非常先进的系统自动评分的文章。这是基于自然语言处理和深度学习技术。因此,我们需要一个系统,以低成本,更少的时间和更准确的分数自动评分文章。因此,我们需要一个不优雅的系统来自动批改作文问题。我们介绍了一种以顺序嵌入的形式对文章进行编码的方法。然后,我们使用一个在两个方向上工作的长短期记忆网络(LSTM)来注册语义信息。这种方法也集中在每篇文章,以便被教导如何专注于那些材料是真实的文章。这样我们也可以很好地证明预测的结果。这种BI LSTM也可以用来产生具有从未来到过去(反向)或从过去到未来两个方向的序列信息的神经网络,称为双向长短期记忆(BI-LSTM)(过去到未来)。为了训练和测试,我们使用了Kaggle自动学生评估奖中提供的一套流行的论文。在我们的研究中,用于自动评分的智能系统以最新的方式预测分数。此外,我们提出的自动评分智能系统有能力突出重要的单词和句子,评估句子中含义的逻辑关系,并提前给出可以解释的分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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