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Research on Behavior Prediction Based on Deep Learning – Take Chengdu Economic Innovation Enterprise as an Example

机译:基于深度学习的行为预测研究 - 以成都经济创新企业为例

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As the company’s workforce continues to expand, finding key features related to employee performance, quickly identifying high-potential employees, and predicting a rise in turnover are hot spots for research. This paper first analyzes the key characteristics of dataset performance and applies deep learning to identify high-potential employees and predicts the rise of separation. Compared with traditional machine learning methods, it can be seen that deep learning applications have a greater improvement. The aim is to provide a new idea for the intersection of human resources and computer AI. In the preparation of this article, a large number of companies’ desensitized employee data were collected in the real industry, including job, performance, education, and data communication between employees. Firstly, an interactive network-based employee topology map was established. According to the large amount of data collected from the real industry, the key characteristics of employee performance were analyzed, and a series of models were compared to traditional machine learning methods and deep learning calculation indicators, including accuracy, AUC and other indicators.
机译:随着公司的劳动力继续扩大,寻找与员工表现相关的关键特征,快速识别高潜在的员工,并预测营业额的增加是研究的热点。本文首先分析了数据集性能的关键特征,并应用深度学习,以识别高潜在的员工,并预测分离的兴起。与传统机器学习方法相比,可以看出深度学习应用具有更大的改善。目的是为人力资源和计算机AI提供一个新的想法。在本文的编制方面,在实际行业中收集了大量公司的脱敏员工数据,包括员工之间的工作,绩效,教育和数据沟通。首先,建立了一个基于互动网络的员工拓扑图。根据真实行业所收集的大量数据,分析了员工性能的关键特征,与传统机器学习方法和深度学习计算指标进行了一系列模型,包括准确性,AUC和其他指标。

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