一种新的代码编程课程热情评价方法

Jain-Shing Wu, Ting Chien, Chin-Yi Yang, Li-Ren Chien
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摘要

为了提高所有青少年的逻辑能力,各国政府都将高中编程课程作为其教育政策之一。因此,开发了一些编程辅助软件,供学生学习编程,在系统上进行考试,并根据学生的代码对学生进行评估。然而,我们很难从学生的学习热情中了解到学生的学习热情,这直接影响到学生接下来的学习状态。因此,观察学生的学习热情对教师来说是很重要的。在我们之前的工作中,我们使用模糊逻辑从DICE系统的日志文件中评估学生的积极性。但是,它只观察登录频率和登录时间。本文提出了一种改进学生学习积极性评价的新方法。首先,我们分析来自日志文件的所有信息。然后,我们将一个学生的所有带有时间戳的行为存储到一个特殊的张量中。在所有学生的张量准备好后,我们将其输入卷积神经网络(CNN),将学生分为“热情”,“正常”和“冷漠”三类。我们使用的日志文件数量超过206个。我们将数据集随机分为训练和测试数据集20次。训练集的准确率为100%,平均测试集的准确率为93.01%。实验结果表明,我们可以将学生分为三类。因此,我们的新方法可以显著地衡量学生的学习热情。
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Novel Enthusiasm Evaluating Method for Code Programming Curriculum
In order to improve the logical ability of all youths, the governments of different countries have set the code programming curriculum in high school as one of their education policies. Hence, some programming aid software are developed for student trying to learn how to program, taking exams on the system, and evaluating the students according to the codes of students. However, it is hard to know the enthusiasm from learning of the students which directly impact the following learning status of students. Hence, observing the enthusiasm from learning of the students is important for teachers. In our previous work, we used the Fuzzy Logic to evaluate the enthusiasm of the students from the log files in the DICE system. However, it only observes the login frequency and during time. In this paper, we provide a novel way to improve the evaluating the enthusiasm of the students. First, we analyze the all the information from the log files. And then, we store all behaviors with time stamp of one student into one special tensor. After all tensors of all students ready, we send input them to the Convolution Neural Network (CNN) to classify the students to three categories “passion”, “normal” and “apathetic.” We used log files with the number of over 206. We separate the dataset into training and testing datasets 20 times randomly. The accuracy of training dataset is 100%, and the accuracy of average testing dataset is 93.01%. The experimental results show that we can separate the students into the three categories. Hence, for our new method can significantly measure the learning enthusiasm of the students.
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