基于二元关联规则提取算法的大学生就业竞争力分析

Lixia Guo
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引用次数: 1

摘要

如今,评估大学生的求职竞争极为重要。然而,现有的各种方法在确定他们的工作准备程度时往往不准确或效率低下。传统的技术通常依赖于简单的衡量标准,或者忽略了影响就业能力的关键因素。大学生就业竞争激烈,其挑战性在于压力感知水平较低、教育经费和关键专业技能。因此,在本研究中,基于二进制关联规则提取算法(IoT-BAREA)的物联网技术提高了大学生的就业竞争力。IoT-BAREA 采用二进制关联规则提取算法来解决这一问题,该算法可帮助检测涉及学生属性和就业结果的大量数据中的重要模式和关系。IoT-BAREA 将自己定位为能够深入了解高度介导学生就业能力水平的特征。本文填补了这一空白,并推荐了一种新的 IoT-BAREA 方法,以帮助提高学生就业竞争力评估的准确性和效率。具体而言,本研究采用精确度、召回率和交互比等严格的评估方法来确定 IoT-BAREA 对学生就业能力的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Employment Competitiveness of College Students Based on Binary Association Rule Extraction Algorithm
 Today, assessing competition among college students in the job search is extremely important. However, various methods available are often inaccurate or inefficient when it comes to determining the level of their readiness for work. Conventional techniques usually depend on simplistic measures or miss out on crucial factors responsible for employability. The challenging characteristics of such competitive employment of college students are the lower levels of perceived stress, financing my education, and crucial professional skills. Hence, in this research, the Internet of Things Based on Binary Association Rule Extraction Algorithm (IoT-BAREA) technologies have improved college students' employment competitiveness. IoT-BAREA addresses this situation using a binary association rule extraction algorithm that helps detect significant patterns and relationships in large amounts of data involving student attributes and employment outcomes. IoT-BAREA positions itself as capable of providing insights into features that highly mediate the employability levels among students. This paper closes this gap and recommends a new IoT-BAREA method to help increase accuracy and efficiency in evaluating student employment competitiveness. Specifically, this study uses rigorous evaluation methods such as precision, recall and interaction ratio to determine how well IoT-BAREA predicts students' employability.
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