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An Analysis of College Students' Deep Entrepreneurship Patterns Based on Spatio-Temporal Big Data Flow

机译:基于时空大数据流的大学生深度创业模式分析

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Students' complicated behaviors often lead to fluctuations in the status of the job market and destroys the stable operation of the job market. This paper introduces the theory of spatio-temporal big data flow, constructs an adaptive student entrepreneurial behavior evaluation method for the status of job market, uses association rules reduction and association rules importance degree method to excavate the data of college students' entrepreneurial behaviors and job market status, analyzes the association degree of college students' entrepreneurial behaviors on job market status changes so to adaptively build the evaluation indicator and weight and accurately quantify the influence degree of students' entrepreneurial behaviors on job market status changes. The experimental results show that the evaluation method can help to accurately find out the students who caused the job market status changes and their behaviors, and effectively support the management and control of students' entrepreneurial behaviors.
机译:学生的复杂行为往往导致就业市场状况的波动,破坏了就业市场的稳定运行。本文介绍了时空大数据流的理论,构建了一种适用于就业市场状况的学生创业行为评估方法,运用关联规则约简和关联规则重要性度法挖掘了大学生创业行为和工作的数据。市场状况,分析大学生创业行为与就业市场状况变化的关联度,以适应性地建立评价指标和权重,准确量化大学生创业行为对就业市场状况变化的影响度。实验结果表明,该评价方法可以准确地找出造成就业市场状况变化及其行为的学生,并有效地支持对学生创业行为的管理和控制。

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