实施AIRM:沙特阿拉伯劳动力市场新的人工智能招聘模式

Q1 Social Sciences
Monirah Ali Aleisa, Natalia Beloff, Martin White
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引用次数: 0

摘要

沙特2030愿景的目标之一是将失业率保持在最低水平,以增强经济能力。先前的研究表明,失业率的增加对一个国家的国内生产总值(GDP)有负面影响。本文旨在利用数据湖(DL)、机器学习(ML)和人工智能(AI)等尖端技术,通过将求职者与空缺职位相匹配,帮助沙特劳动力市场。目前,这一过程由人类专家执行;然而,这是费时费力的。此外,在沙特劳动力市场,这一过程没有使用一个有凝聚力的数据中心来监测、整合或分析劳动力市场数据,导致了一些效率低下的问题,如偏见和延迟。这些效率低下的原因是缺乏技术,更重要的是,没有国家数据中心的开放劳动力市场。本文提出了一种新的人工智能招聘模型(AIRM)架构,该架构利用dl, ML和AI快速有效地将求职者与沙特劳动力市场的空缺职位相匹配。最小可行产品(MVP)使用劳动力市场数据集模拟语料库来测试拟议的AIRM架构,用于培训目的;该体系结构进一步评估了三个研究合作者,他们都是人力资源(HR)的专业人员。由于这项研究本质上是数据驱动的,它需要领域专家的合作。AIRM架构的第一层使用平衡迭代约简和分层聚类(BIRCH)作为初始筛选层的聚类算法。映射层使用具有鲁棒优化的BERT预训练方法(RoBERTa)的句子转换器作为基础模型,并使用Facebook AI相似度搜索(FAISS)进行排名。最后,偏好层将用户的偏好作为一个列表,并使用预训练的交叉编码器模型对结果进行排序,考虑更重要的单词的权重。这种新的AIRM产生了有利的结果:本研究考虑接受至少一位人力资源专家批准的AIRM选择,以解释人力资源专家专门处理选择过程的主观特征。该研究使用两个指标来评估AIRM:准确性和时间。AIRM的总体匹配准确率为84%,至少有一位专家同意该系统的输出。此外,它在2.4分钟内完成了任务,而人类专家平均需要6天以上的时间。总的来说,AIRM在任务执行方面优于人类,这使得它在预先选择一组申请人和职位方面很有用。AIRM并不局限于政府服务。它还可以帮助任何使用大数据的商业企业。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing AIRM: a new AI recruiting model for the Saudi Arabia labour market
Abstract One of the goals of Saudi Vision 2030 is to keep the unemployment rate at the lowest level to empower the economy. Prior research has shown that an increase in unemployment has a negative effect on a country’s Gross Domestic Product (GDP). This paper aims to utilise cutting-edge technology such as Data Lake (DL), Machine Learning (ML) and Artificial Intelligence (AI) to assist the Saudi labour market by matching job seekers with vacant positions. Currently, human experts carry out this process; however, this is time-consuming and labour-intensive. Moreover, in the Saudi labour market, this process does not use a cohesive data centre to monitor, integrate or analyse labour-market data, resulting in several inefficiencies, such as bias and latency. These inefficiencies arise from a lack of technologies and, more importantly, from having an open labour-market without a national data centre. This paper proposes a new AI Recruiting Model (AIRM) architecture that exploits DLs, ML and AI to rapidly and efficiently match job seekers to vacant positions in the Saudi labour market. A Minimum Viable Product (MVP) is employed to test the proposed AIRM architecture using a labour market dataset simulation corpus for training purposes; the architecture is further evaluated against three research collaborators who are all professionals in Human Resources (HR). As this research is data-driven in nature, it requires collaboration from domain experts. The first layer of the AIRM architecture uses balanced iterative reducing and clustering using hierarchies (BIRCH) as a clustering algorithm for the initial screening layer. The mapping layer uses sentence transformers with a robustly optimised BERT pre-training approach (RoBERTa) as the base model, and ranking is carried out using the Facebook AI Similarity Search (FAISS). Finally, the preferences layer takes the user’s preferences as a list and sorts the results using the pre-trained cross-encoders model, considering the weight of the more important words. This new AIRM has yielded favourable outcomes: This research considered accepting an AIRM selection ratified by at least one HR expert to account for the subjective character of the selection process when exclusively handled by human HR experts. The research evaluated the AIRM using two metrics: accuracy and time. The AIRM had an overall matching accuracy of 84%, with at least one expert agreeing with the system’s output. Furthermore, it completed the task in 2.4 min, whereas human experts took more than 6 days on average. Overall, the AIRM outperforms humans in task execution, making it useful in pre-selecting a group of applicants and positions. The AIRM is not limited to government services. It can also help any commercial business that uses Big Data.
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来源期刊
Journal of Innovation and Entrepreneurship
Journal of Innovation and Entrepreneurship Social Sciences-Sociology and Political Science
CiteScore
7.20
自引率
0.00%
发文量
57
审稿时长
13 weeks
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