论文标题

使用机器学习的自动内容分级

Automated Content Grading Using Machine Learning

论文作者

Chauhan, Rahul Kr, Saharan, Ravinder, Singh, Siddhartha, Sharma, Priti

论文摘要

考试论文的评分是一项忙碌的时间限制任务,通常会遇到效率低下和检查的偏见。该研究项目是一个原始的实验,用于在技术课程中学生在考试中编写的理论答案的评分自动化,但尚未按人进行的分级。在本文中,我们展示了如何使用机器学习中的算法方法来自动检查和评分考试答案论文中的理论内容。总体上已经使用了一袋单词,其矢量和质心以及一些语义和词汇文本功能。机器学习模型已在由毕业的学生参加技术课程的学生手动构建的数据集上实施。将这些模型进行了比较以显示每个模型的有效性。

Grading of examination papers is a hectic, time-labor intensive task and is often subjected to inefficiency and bias in checking. This research project is a primitive experiment in the automation of grading of theoretical answers written in exams by students in technical courses which yet had continued to be human graded. In this paper, we show how the algorithmic approach in machine learning can be used to automatically examine and grade theoretical content in exam answer papers. Bag of words, their vectors & centroids, and a few semantic and lexical text features have been used overall. Machine learning models have been implemented on datasets manually built from exams given by graduating students enrolled in technical courses. These models have been compared to show the effectiveness of each model.

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