基于自组织特征映射规则提取的在线法官分类

Chowdhury Md Intisar, Y. Watanobe
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引用次数: 18

摘要

计算机编程是当代最重要、最关键的技能之一。为了鼓励和使程序员能够练习和提高自己的技能,出现了许多在线评委编程平台。评估这些程序员的能力和进步是教育数据挖掘中的一个重要研究课题,目的是提供适应的教育内容和对“有风险”学习者的早期预测。本文在Aizu Online Judge (AOJ)数据库的程序员性能日志数据上训练了Kohonen自组织特征映射(KSOFM)神经网络。从训练好的网络的u矩阵图中提取命题规则和知识,将AOJ程序员划分为三个不同的聚类。“专家”、“中级”和“有风险”。比例规则在测试集上执行分类的准确率为94%。为了验证和比较,在同一数据集上训练了另外三个预测模型。其中,前馈多层神经网络和决策树的准确率分别达到97%和96%。相比之下,支持向量机的准确率约为88%,但在识别“有风险”的学生方面,它的召回率最高,达到99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Online Judge Programmers based on Rule Extraction from Self Organizing Feature Map
Computer programming is one of the most important and vital skill in the current generation. In order to encourage and enable programmers to practice and sharpen their skills, there exist many online judge programming platforms. Estimation of these programmers’ strength and progress has been an important research topic in educational data mining in order to provide adaptive educational contents and early prediction of ‘at risk’ learner. In this paper, we trained a Kohonen Self organizing feature map (KSOFM) neural network on programmers’ performance log data of Aizu Online Judge (AOJ) database. Propositional rules and knowledge was extracted from the U-matrix diagram of the trained network which partitioned AOJ programmers into three distinct clusters ie. ‘expert’, ‘intermediate’ and ‘at risk’. The proportional rules performed classification with an accuracy of 94% on a testing set. For validation and comparison, three more predicting models were trained on the same dataset. Among them, feedforward multilayer neural network and decision tree have scored accuracy of 97% and 96% respectively. In contrast, the precision score for support vector machine was about 88%, but it scored the highest recall score of 99% in terms of identifying ‘at risk’ students.
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