AI and public contests: a model to improve the evaluation and selection of public contest candidates in the Police Force

IF 2.4 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Mariana Bailao Goncalves, M. Anastasiadou, Vítor Santos
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引用次数: 1

Abstract

Purpose The number of candidates applying to public contests (PC) is increasing compared to the number of human resources employees required for selecting them for the Police Force (PF). This work intends to perceive how those public institutions can evaluate and select their candidates efficiently during the different phases of the recruitment process. To achieve this purpose, artificial intelligence (AI) was studied. This paper aims to focus on analysing the AI technologies most used and appropriate to the PF as a complementary recruitment strategy of the National Criminal Investigation police agency of Portugal – Polícia Judiciária. Design/methodology/approach Using design science research as a methodological approach, the authors suggest a theoretical framework in pair with the segmentation of the candidates and comprehend the most important facts facing public institutions regarding the usage of AI technologies to make decisions about evaluating and selecting candidates. Following the preferred reporting items for systematic reviews and meta-analyses methodology guidelines, a systematic literature review and meta-analyses method was adopted to identify how the usage and exploitation of transparent AI positively impact the recruitment process of a public institution, resulting in an analysis of 34 papers between 2017 and 2021. Findings Results suggest that the conceptual pairing of evaluation and selection problems of candidates who apply to PC with applicable AI technology such as K-means, hierarchical clustering, artificial neural network and convolutional neural network algorithms can support the recruitment process and could help reduce the workload in the entire process while maintaining the standard of responsibility. The combination of AI and human decision-making is a fair, objective and unbiased process emphasising a decision-making process free of nepotism and favouritism when carefully developed. Innovative and modern as a category, group the statements that emphasise the innovative and contemporary nature of the process. Research limitations/implications There are two main limitations in this study that should be considered. Firstly, the difficulty regarding the timetable, privacy and legal issues associated with public institutions. Secondly, a small group of experts served as the validation group for the new framework. Individual semi-structured interviews were conducted to alleviate this constraint. They provide additional insights into an interviewee’s opinions and beliefs. Social implications Ensure that the system is fair, transparent and facilitates their application process. Originality/value The main contribution is the AI-based theoretical framework, applicable within the analysis of literature papers, focusing on the problem of how the institutions can gain insights about their candidates while profiling them, how to obtain more accurate information from the interview phase and how to reach a more rigorous assessment of their emotional intelligence providing a better alignment of moral values. This work aims to improve the decision-making process of a PF institution recruiter by turning it into a more automated and evidence-based decision when recruiting an adequate candidate for the job vacancy.
人工智能与公开竞赛:改进警察部队公开竞赛候选人评估和选拔的模型
目的与为警察部队选拔候选人所需的人力资源员工人数相比,申请参加公共竞赛的候选人人数正在增加。这项工作旨在了解这些公共机构如何在招聘过程的不同阶段有效地评估和选择候选人。为了达到这个目的,研究了人工智能。本文旨在重点分析最常用和最适合PF的人工智能技术,作为葡萄牙国家刑事调查警察局Polícia Judiciária.Design/methodology/approach的补充招聘策略。将设计科学研究作为一种方法论方法,作者提出了一个与候选人细分相结合的理论框架,并理解了公共机构在使用人工智能技术做出候选人评估和选择决策方面面临的最重要事实。根据系统审查和荟萃分析方法指南的首选报告项目,采用了系统的文献审查和元分析方法,以确定透明人工智能的使用和利用如何对公共机构的招聘过程产生积极影响,对2017年至2021年间的34篇论文进行了分析。结果表明,应用K-means、层次聚类等人工智能技术对申请PC的候选人的评估和选择问题进行了概念配对,人工神经网络和卷积神经网络算法可以支持招聘过程,有助于在保持职责标准的同时减少整个过程的工作量。人工智能和人类决策的结合是一个公平、客观和公正的过程,强调在精心制定的决策过程中没有裙带关系和偏袒。创新和现代作为一个类别,将强调过程创新和现代性质的陈述分组。研究局限性/含义本研究应考虑两个主要局限性。首先,与公共机构有关的时间表、隐私和法律问题的困难。第二,一小组专家作为新框架的验证小组。为了缓解这种限制,进行了个别的半结构化访谈。它们为受访者的观点和信念提供了额外的见解。社会影响确保系统公平、透明,并促进他们的申请过程。原创性/价值主要贡献是基于人工智能的理论框架,适用于文献论文的分析,重点是研究机构如何在对候选人进行分析的同时获得对候选人的见解,如何从面试阶段获得更准确的信息,以及如何对他们的情商进行更严格的评估,从而更好地协调道德价值观。这项工作旨在改善PF机构招聘人员的决策过程,在招聘合适的职位空缺候选人时,将其转变为一个更加自动化和基于证据的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transforming Government- People Process and Policy
Transforming Government- People Process and Policy INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
6.70
自引率
11.50%
发文量
44
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