基于Web文本挖掘的物流人才需求特征研究

Sitong Xue, Beilin Liu
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引用次数: 0

摘要

针对物流求职者的“就业难”和企业的“招聘难”并存的问题,本工作采用网络爬虫技术,从招聘网站共收集了17086条数据,并利用网络文本挖掘对中国招聘数据文本进行分割,利用BERT预训练深度模型对非结构化信息进行文本聚类和情感分析,并利用复杂的网络工具直观地解释工作与需求特征之间的关系。分析结果为物流人才的专业发展提供帮助,高校可以在学生培养方向上更明确地通过市场需求为企业输送优秀的物流人才提供具体建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the demand characteristics of logistics talents based on Web text mining
In view of the coexistence of “difficulty in employment” for logistics job seekers and “difficulty in recruitment” for enterprises, this work uses web crawler technology to collect a total of 17,086 pieces of data from recruitment websites, and uses web text mining to segment Chinese recruitment data text, using BERT pre-training depth model Process text clustering and sentiment analysis for unstructured information, and use complex network tools to visually interpret the relationship between job and demand characteristics. The analysis results provide professional development help for logistics talents, so that colleges and universities can provide specific suggestions for transporting outstanding logistics talents to enterprises through the market demand more clearly on the training direction of students.
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