An Analysis of College Students' Behavior Based on Positive and Negative Association Rules

ADVANCES IN NATURAL COMPUTATION, FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY, ICNC-FSKD 2022(2023)

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摘要
Positive association rule (PAR) mining has been often used in campus data analysis, while negative association rule (NAR) mining has not, which will result in a lot of valuable information missing. This paper collects real campus data that contains the student's academic performance, e-card consumption behavior, book lending records and mental health status and analyzes them with NAR and PAR techniques. We first preprocess the data to obtain a suitable format. Then we use a method called Positive and Negative Association Rules on Correlation (PNARC) to mine NARs and PARs from these data. Finally, we obtain a lot of valuable information, for example, there is a strong negative correlation between depression and academic performance. These results are very helpful for educators to improve college students' performance.
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关键词
Academic performance,Campus data,Negative association rules,PNARC model
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