用于预测学术医疗中心教员晋升概率的计算器。

IF 1.7 Q3 HEALTH CARE SCIENCES & SERVICES
May May Yeo, Shih-Hui Lim, Anshul Kumar, Anne W Thompson
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引用次数: 0

摘要

目标:学术医疗中心(AMC)拥有2200多名教职员工,每年管理约300次任命和晋升。考虑到这些庞大的数字,我们探讨了机器学习是否可以预测获得促销批准的概率。方法:我们使用预测分析方法检验了与学术晋升相关的变量。这些数据包括候选人的出版物、H指数、教育贡献以及AMC内外的领导力或服务。结果:在所采用的五种方法中,通过我们的留一交叉验证模型评估过程,随机森林算法被确定为“最佳”模型。结论:据我们所知,这是第一次对AMC进行研究。开发的模型可以作为一个“计算器”来评估教师的表现,并帮助申请人根据历史数据了解他们的晋升机会。此外,它还可以作为候选人审查过程中任期和晋升委员会的指南。这增加了晋升过程的透明度,并使教师的愿望与AMC的使命和愿景相一致。其他研究人员有可能采用我们分析中的算法,并将其应用于他们的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calculator for predicting the probability of faculty promotion in an academic medical centre.

Objective: The academic medical centre (AMC), with over 2200 faculty members, annually manages approximately 300 appointments and promotions. Considering these large numbers, we explored whether machine learning could predict the probability of obtaining promotional approvals.

Methods: We examined variables related to academic promotion using predictive analytical methods. The data included candidates' publications, the H-index, educational contributions and leadership or service within and outside the AMC.

Results: Of the five methods employed, the random forest algorithm was identified as the 'best' model through our leave-one-out cross-validation model evaluation process.

Conclusions: To the best of our knowledge, this is the first study on the AMC. The developed model can be deployed as a 'calculator' to evaluate faculty performance and assist applicants in understanding their chances of promotion based on historical data. Furthermore, it can act as a guide for tenure and promotion committees in candidate review processes. This increases the transparency of the promotion process and aligns faculty aspirations with the AMC's mission and vision. It is possible for other researchers to adopt the algorithms from our analysis and apply them to their data.

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来源期刊
BMJ Leader
BMJ Leader Nursing-Leadership and Management
CiteScore
3.00
自引率
7.40%
发文量
57
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