基于频繁模式增长算法的学生不良行为关联模式识别

Erlinda Erlinda, Dwipa Junika Putra, Mourend Devegi
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引用次数: 0

摘要

学生违纪行为通常是由违反学校规定的学生犯下的事件。这自然让学校当局感到担忧,学生的不当行为让他们不堪重负。学生违规是一个常见的问题,它会干扰一个安全有序的学习环境。违反规则的学生越多,对学生成绩、纪律、欠佳的教学活动以及学生校外社交生活等方面的影响就越大。识别容易违反规则的学生可以帮助学校官员实施更有效的预防计划。数据挖掘是从大型数据集中提取信息以发现隐藏在其中的模式和关系的过程。本研究旨在使用频繁模式增长算法来识别频繁的学生违规行为。频繁模式增长(FP -growth)算法用于生成频繁项集,然后在关联规则过程中使用这些频繁项集。关联规则流程旨在根据发现的频繁项集查找规则或违规之间的关系。此过程受预定义的最小支持度和最小置信度值的影响。最小支持值为30%,最小置信度为50%用于获得具有足够高置信度的规则。预计本研究的鉴定结果将有助于更好地了解学生在学校中常见的侵犯行为类型。这些信息可以被学校官员用来制定更有效的预防策略和关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Student Identification Based on Patterns of Association For Student Misbehaviour Using Frequent Pattern Growth Algorithms
Student infractions are incidents often committed by students who break the rules at school. This naturally worries school authorities and overwhelms them with student misbehavior. Student rule-breaking is a common problem that can interfere with a safe and orderly learning environment. The more students break the rules, the greater the impact on several aspects, including student achievement, discipline, suboptimal teaching and learning activities, and students' social lives outside of school. Identifying students who are prone to rule violations can help school officials implement more effective prevention programs. Data mining is a process of extracting information from large data sets to discover patterns and relationships hidden within them. This study aims to identify frequent student infractions using the Frequent Pattern Growth algorithm. The Frequent Pattern Growth (FP -growth) algorithm is used to generate frequent itemsets that are then used in the association rules process. The association rules process aims to find rules or relationships between violations based on the discovered Frequent Itemsets. This process is influenced by predefined minimum support and minimum confidence values. A Minimum Support value of 30% and a Minimum Confidence value of 50% are used to obtain rules with a sufficiently high confidence level. It is expected that the identification results from this study will provide a better understanding of the types of violations commonly committed by students in school. This information can be used by school officials to develop more effective prevention strategies and focus on.
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