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Study on Talent Introduction Strategies in Zhejiang University of Finance and Economics Based on Data Mining

机译:基于数据挖掘的浙江财经大学人才引进策略研究

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Current talent introduction strategies are mainly based on staff arrangement, school discipline construction and so on, which depend on experience actually. However, this kind of empirical approach, lacking of scientific basis, usually causes problems in applications such as uneven scientific research level. In this paper, we intend to use data mining to analyze talent information of teachers in Zhejiang University of Finance and Economics, China from 2011 to 2017, and then to predict their capabilities in obtaining National Foundation of China. In a word, this paper aims to provide decision support for universities' talent introduction strategies. After data cleaning and feature engineering, Apriori algorithm is applied to mine the association rules and find key factors that are closely related to teachers' acquisition of National Science Foundation of China. Then we make predictions with four kinds of models, including Logistic Regression Model, Decision Tree Model, Artificial Neural Network Model and Support Vector Machine Model. In the end, in order to get a more accurate model, Logistic Regression Model which has the highest accuracy of prediction is used to do stepwise regression.
机译:当前的人才引进策略主要基于人员安排,学校学科建设等,这实际上取决于经验。但是,这种缺乏科学依据的经验方法通常会在应用中出现问题,例如科研水平不均衡。在本文中,我们打算使用数据挖掘来分析2011年至2017年中国浙江财经大学教师的人才信息,然后预测他们获得中国国家基金会的能力。总之,本文旨在为大学的人才引进策略提供决策支持。经过数据清理和特征工程处理后,采用Apriori算法挖掘关联规则,发现与教师获得国家科学基金会息息相关的关键因素。然后用Logistic回归模型,决策树模型,人工神经网络模型和支持向量机模型四种模型进行预测。最后,为了获得更准确的模型,使用预测精度最高的Logistic回归模型进行逐步回归。

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