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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >A content-boosted collaborative filtering algorithm for personalized training in interpretation of radiological imaging
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A content-boosted collaborative filtering algorithm for personalized training in interpretation of radiological imaging

机译:一种内容增强协作过滤算法,用于放射成像解释中的个性化培训

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摘要

Devising a method that can select cases based on the performance levels of trainees and the characteristics of cases is essential for developing a personalized training program in radiology education. In this paper, we propose a novel hybrid prediction algorithm called content-boosted collaborative filtering (CBCF) to predict the difficulty level of each case for each trainee. The CBCF utilizes a content-based filtering (CBF) method to enhance existing trainee-case ratings data and then provides final predictions through a collaborative filtering (CF) algorithm. The CBCF algorithm incorporates the advantages of both CBF and CF, while not inheriting the disadvantages of either. The CBCF method is compared with the pure CBF and pure CF approaches using three datasets. The experimental data are then evaluated in terms of the MAE metric. Our experimental results show that the CBCF outperforms the pure CBF and CF methods by 13.33 and 12.17 %, respectively, in terms of prediction precision. This also suggests that the CBCF can be used in the development of personalized training systems in radiology education.
机译:设计一种可以根据受训人员的绩效水平和案例特征选择案例的方法,对于开发放射教育中的个性化培训计划至关重要。在本文中,我们提出了一种新颖的混合预测算法,称为内容增强协作过滤(CBCF),以预测每个受训者每种情况的难度。 CBCF利用基于内容的过滤(CBF)方法来增强现有学员案例收视率数据,然后通过协作过滤(CF)算法提供最终预测。 CBCF算法结合了CBF和CF的优点,而没有继承两者的缺点。使用三个数据集将CBCF方法与纯CBF和纯CF方法进行了比较。然后根据MAE指标评估实验数据。我们的实验结果表明,在预测精度方面,CBCF分别优于纯CBF和CF方法13.33%和12.17%。这也表明,CBCF可用于放射学教育中个性化培训系统的开发。

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