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An empirical analysis on auto corporation training program planning by data mining techniques

机译:基于数据挖掘技术的汽车企业培训计划规划的实证分析

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Under limited resources in corporation education training, to enhance human resources quality, making education training program planning more efficient is a significant issue in training future talents. In accordance with Taiwan TrainQuali System (TTQS), the basic training structure is ton specify P (Plan) and D (Design). Ensuing results will be easier and successful. From TTQS database of Bureau of Employment and Vocational Training, corporations in Taoyuan, Hsinchu and Miaoli winning Gold Medals (Group B) have gaps outside control line in P and D. Enhancement is needed in the gap. The paper aims at a certain company winning Gold Medals in Taoyuan, Hsinchu and Miaoli to locate hidden or unobvious information with data mining, which will help future education training course planning and design. The researchers use two-stage clustering (SOM and K-means) under data mining theory to collect personnel training data of Automobile Corporation A in Taiwan and China with data mining and analysis. The results under the two algorithms will serve as reference for future education training courses. In the end, in combination of back-propagation neural network to develop education training prediction model, the research offers reference for writing knowledge management system to enhance effects of personnel participation in training at corporations.
机译:在公司教育培训资源有限的情况下,提高人力资源质量,提高教育培训计划的计划效率是培养未来人才的重要问题。根据台湾TrainQuali系统(TTQS),基本培训结构为指定P(计划)和D(设计)。取得结果将更加容易和成功。从就业和职业培训局的TTQS数据库中,在桃园,新竹和苗栗获得金牌的企业(B组)在P和D的控制范围之外存在差距。需要对此进行增强。本文旨在针对某家在桃园,新竹和苗栗市获得金牌的公司,通过数据挖掘来定位隐藏或不明显的信息,这将有助于未来的教育培训课程的规划和设计。研究人员根据数据挖掘理论使用两阶段聚类(SOM和K-means),通过数据挖掘和分析来收集台湾和中国大陆汽车公司A的人员培训数据。这两种算法的结果将为将来的教育培训课程提供参考。最后结合反向传播神经网络开发教育培训预测模型,为编写知识管理系统以提高人员参与企业培训的效果提供参考。

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