Social recruiting: an application of social network analysis for preselection of candidates

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Stevan Milovanović, Z. Bogdanović, A. Labus, M. Despotović-Zrakić, Svetlana Mitrovic
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引用次数: 1

Abstract

PurposeThe paper aims to studiy social recruiting for finding suitable candidates on social networks. The main goal is to develop a methodological approach that would enable preselection of candidates using social network analysis. The research focus is on the automated collection of data using the web scraping method. Based on the information collected from the users' profiles, three clusters of skills and interests are created: technical, empirical and education-based. The identified clusters enable the recruiter to effectively search for suitable candidates.Design/methodology/approachThis paper proposes a new methodological approach for the preselection of candidates based on social network analysis (SNA). The defined methodological approach includes the following phases: Social network selection according to the defined preselection goals; Automatic data collection from the selected social network using the web scraping method; Filtering, processing and statistical analysis of data. Data analysis to identify relevant information for the preselection of candidates using attributes clustering and SNA. Preselection of candidates is based on the information obtained.FindingsIt is possible to contribute to candidate preselection in the recruiting process by identifying key categories of skills and interests of candidates. Using a defined methodological approach allows recruiters to identify candidates who possess the skills and interests defined by the search. A defined method automates the verification of the existence, or absence, of a particular category of skills or interests on the profiles of the potential candidates. The primary intention is reflected in the screening and filtering of the skills and interests of potential candidates, which contributes to a more effective preselection process.Research limitations/implicationsA small sample of the participants is present in the preliminary evaluation. A manual revision of the collected skills and interests is conducted. The recruiters should have basic knowledge of the SNA methodology in order to understand its application in the described method. The reliability of the collected data is assessed, because users provide data themselves when filling out their social network profiles.Practical implicationsThe presented method could be applied on different social networks, such as GitHub or AngelList for clustering profile skills. For a different social network, only the web scraping instructions would change. This method is composed of mutually independent steps. This means that each step can be implemented differently, without changing the whole process. The results of a pilot project evaluation indicate that the HR experts are interested in the proposed method and that they would be willing to include it in their practice.Social implicationsThe social implication should be the determination of relevant skills and interests during the preselection phase of candidates in the process of social recruitment.Originality/valueIn contrast to previous studies that were discussed in the paper, this paper defines a method for automatic data collection using the web scraper tool. The described method allows the collection of more data in a shorter period. Additionally, it reduces the cost of creating an initial data set by removing the cost of hiring interviewers, questioners and people who collect data from social networks. A completely automated process of data collection from a particular social network stands out from this model from currently available solutions. Considering the method of data collection implemented in this paper, the proposed method provides opportunities to extend the scope of collected data to implicit data, which is not possible using the tools presented in other papers.
社会招聘:社会网络分析在候选人预选中的应用
本文旨在研究社交招聘,在社交网络上寻找合适的候选人。主要目标是开发一种方法方法,可以使用社会网络分析来预选候选人。研究的重点是使用网络抓取方法自动收集数据。根据从用户档案中收集的信息,创建了三组技能和兴趣:技术、经验和教育基础。确定的集群使招聘人员能够有效地寻找合适的候选人。设计/方法/途径本文提出了一种基于社会网络分析(SNA)的候选人预选方法。确定的方法方法包括以下几个阶段:根据确定的预选目标进行社会网络选择;使用网页抓取方法从选定的社交网络自动收集数据;对数据进行过滤、处理和统计分析。使用属性聚类和SNA进行数据分析,识别相关信息,预选候选人。候选人的预选是基于所获得的信息。通过确定候选人的关键技能和兴趣类别,可以在招聘过程中对候选人进行预选。使用一种明确的方法方法,招聘人员可以识别出拥有搜索定义的技能和兴趣的候选人。已定义的方法可以自动验证潜在候选人的概要文件中存在或不存在特定类别的技能或兴趣。主要意图反映在对潜在候选人的技能和兴趣进行筛选和过滤,这有助于更有效的预选过程。研究的局限性/意义初步评估的参与者样本很小。对收集到的技能和兴趣进行手工修订。招聘人员应具备SNA方法论的基本知识,以便了解其在所述方法中的应用。收集到的数据的可靠性是评估的,因为用户在填写他们的社交网络资料时提供了自己的数据。本文提出的方法可以应用于不同的社交网络,如GitHub或AngelList的聚类配置文件技能。对于不同的社交网络,只有网页抓取指令会改变。该方法由相互独立的步骤组成。这意味着每个步骤可以以不同的方式实现,而无需改变整个过程。试点项目评估的结果表明,人力资源专家对提出的方法很感兴趣,并且他们愿意将其纳入他们的实践。社会含义社会含义应该是社会招聘过程中候选人预选阶段对相关技能和兴趣的确定。原创性/价值与本文讨论的先前研究相反,本文定义了一种使用web scraper工具自动收集数据的方法。所描述的方法允许在较短的时间内收集更多的数据。此外,它通过消除招聘面试官、提问者和从社交网络收集数据的人员的成本,降低了创建初始数据集的成本。从一个特定的社交网络中收集数据的完全自动化的过程从当前可用的解决方案中脱颖而出。考虑到本文中实现的数据收集方法,所提出的方法提供了将收集数据的范围扩展到隐式数据的机会,这是使用其他论文中提供的工具无法实现的。
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
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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