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Using data mining techniques to predict and detect important features for book borrowing rate in academic libraries

机译:使用数据挖掘技术预测和检测高校图书馆图书借阅率的重要特征

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Library usage and book borrowing are important factors in student's academic performance. It is highly essential for academic institutions to estimate how frequently their libraries are used by students and how often the materials in these facilities will be needed by students during the academic session. In this paper, we present a classification method to predict book borrowing rate in academic libraries by students, based on their library usage behaviors. We conducted a survey of 200 university students on their usage of the library and used this data to establish a correlation between features and outcome. We tested several types of tree classification with different parameters and used the elimination method on features to identify the best possible parameters for prediction. We reached a % 71.9 accuracy rate during training and % 72 on test data. We identified that some of the features from the survey questionnaire may be irrelevant to classification. We used Python libraries during the building and testing of the classification methods.
机译:图书馆的使用和借书是学生学习成绩的重要因素。对于学术机构而言,估算学生使用图书馆的频率以及学生在学习期间需要这些设施中的资料的频率非常重要。在本文中,我们提出了一种基于学生的图书馆使用行为来预测学生在大学图书馆借书率的分类方法。我们对200名大学生对图书馆的使用情况进行了调查,并使用此数据建立了特征与结果之间的相关性。我们测试了具有不同参数的几种类型的树分类,并使用特征上的消除方法来确定最佳的预测参数。培训期间,我们的准确率达到了71.9%,测试数据达到了72%。我们发现调查问卷中的某些功能可能与分类无关。在构建和测试分类方法期间,我们使用了Python库。

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