Keeping in mind the necessity of intelligent system in educational sector, this paper proposes a text analysis based automated approach for automatic evaluation of the descriptive answers in an examination. In particular, the research focuses on the use of intelligent concepts of Natural Language Processing and Data Mining for computer aided examination evaluation system. The paper present an architecture for fair evaluation of answer sheet. In this architecture, the examiner creates a sample answer sheet for given sets of question. By using the concept of text summarization, text semantics and keywords summarization, the final score for each answer is calculated. The text similarity model is based on Siamese Manhattan LSTM (MaLSTM). The results of this research were compared to manually graded assignments and other existing system. This approach was found to be very efficient in order to be implemented in an institution or in an university.
翻译:考虑到教育部门智能系统的必要性,本文件建议采用基于文字分析的自动化方法,对考试中的描述性答复进行自动评价,特别是,研究的重点是将自然语言处理和数据开采的智能概念用于计算机辅助考试评价系统,文件为公平评价回答表提供了一个架构。在这一结构中,审查者为特定问题组制作了一份样本回答表。通过使用文本汇总、文字语义和关键词汇总的概念,计算了每个答案的最后评分。文本相似性模型以Siamsese Manhathton LSTM(MALSTM)为基础。这一研究结果与手动分级任务和其他现有系统进行了比较,发现这种方法非常有效,以便在一个机构或大学实施。