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首页> 外文期刊>ACM Transactions on Information Systems >Automatically Learning Topics and Difficulty Levels of Problems in Online Judge Systems
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Automatically Learning Topics and Difficulty Levels of Problems in Online Judge Systems

机译:自动学习在线法官系统中的主题和问题的难度

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摘要

Online Judge (OJ) systems have been widely used in many areas, including programming, mathematical problems solving, and job interviews. Unlike other online learning systems, such as Massive Open Online Course, most OJ systems are designed for self-directed learning without the intervention of teachers. Also, in most OJ systems, problems are simply listed in volumes and there is no clear organization of them by topics or difficulty levels. As such, problems in the same volume are mixed in terms of topics or difficulty levels. By analyzing large-scale users' learning traces, we observe that there are two major learning modes (or patterns). Users either practice problems in a sequential manner from the same volume regardless of their topics or they attempt problems about the same topic, which may spread across multiple volumes. Our observation is consistent with the findings in classic educational psychology. Based on our observation, we propose a novel two-mode Markov topic model to automatically detect the topics of online problems by jointly characterizing the two learning modes. For further predicting the difficulty level of online problems, we propose a competition-based expertise model using the learned topic information. Extensive experiments on three large OJ datasets have demonstrated the effectiveness of our approach in three different tasks, including skill topic extraction, expertise competition prediction and problem recommendation.
机译:在线法官(OJ)系统已广泛应用于许多领域,包括编程,数学问题解决和工作面试。与其他在线学习系统(如“大规模开放在线课程”)不同,大多数OJ系统都是为自主学习而设计的,而无需老师的干预。而且,在大多数OJ系统中,问题只是按卷列出,并且没有按主题或难度级别明确组织它们。这样,就主题或难易程度而言,相同数量的问题是混杂的。通过分析大规模用户的学习轨迹,我们观察到有两种主要的学习模式(或模式)。用户或者从相同的卷开始按顺序练习问题,而不管他们的主题是什么,或者他们尝试有关同一主题的问题,这些问题可能分布在多个卷中。我们的观察与经典教育心理学的发现是一致的。基于我们的观察,我们提出了一种新颖的两模式马尔可夫主题模型,通过共同表征两种学习模式来自动检测在线问题的主题。为了进一步预测在线问题的难度,我们使用学习到的主题信息提出了基于竞争的专业知识模型。在三个大型OJ数据集上进行的大量实验证明了我们的方法在三种不同任务中的有效性,包括技能主题提取,专业知识竞争预测和问题推荐。

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