Law School, Hunan University, Changsha 410082, China.
J Environ Public Health. 2022 Aug 16;2022:1650583. doi: 10.1155/2022/1650583. eCollection 2022.
In an AI environment, this article suggests an HR data integration system based on a hidden semantic model to address the low integration of HR raw data. It provides a decision-making framework for enterprise personnel recruitment and employee training by making predictions and analyses based on HR information. The basis for the HR data integration model base is established in this article, along with its construction principle, process, and model types. Based on this, a method for creating an HR data integration system that has a straightforward modeling process, an easy solution, high prediction accuracy, verifiability, and correction is chosen. An HR recommendation algorithm combining a hidden semantic model and a deep forest model is proposed. At the same time, preprocess HR data and create a data warehouse. According to experiments, this system's stability can reach a maximum of 95.84 percent and its efficiency in integrating HR data can reach 96.37 percent. The system operates with ease and consistently delivers superior performance. It can more effectively realize the fusion and mining of HR data and offer practical services for related work.
在人工智能环境下,本文提出了一种基于隐语义模型的人力资源数据集成系统,以解决人力资源原始数据集成度低的问题。通过对人力资源信息进行预测和分析,为企业人员招聘和员工培训提供决策框架。本文建立了人力资源数据集成模型库的基础,阐述了其构建原则、过程和模型类型。在此基础上,选择了一种建模过程简单、求解容易、预测精度高、可验证和可修正的人力资源数据集成系统的创建方法。提出了一种结合隐语义模型和深度森林模型的人力资源推荐算法。同时对人力资源数据进行预处理并创建数据仓库。实验表明,该系统的稳定性最高可达 95.84%,人力资源数据集成效率可达 96.37%。系统操作简单,性能始终如一,能够更有效地实现人力资源数据的融合和挖掘,为相关工作提供实用服务。