{"title":"Mitigating Algorithm Aversion in Recruiting: A Study on Explainable AI for Conversational Agents","authors":"Jürgen Fleiß, Elisabeth Bäck, Stefan Thalmann","doi":"10.1145/3645057.3645062","DOIUrl":null,"url":null,"abstract":"The use of conversational agents (CAs) based on artificial intelligence (AI) is becoming more common in the field of recruiting. Organizations are now adopting AI-based CAs for applicant (pre-)selection, but negative news coverage, especially the black-box character of AI, has hindered adoption. So far, little is known about the contextual factors influencing users' perception of AI-based CAs in general and the effect of provided explanations by explainable AI (XAI) in particular. While research on algorithm aversion provides some initial explanations, information regarding the effects of different XAI approaches on different types of decisions on the attitudes of (potential) applicants is scarce. Therefore, in this study, we use a quantitative, quota-representative study (n = 490) to assess the acceptance of CAs in recruiting. By applying an experimental within-subject design, we provide a more nuanced perspective on why and when providing explanations increases user acceptance. We also show that contextual factors such as the type of assessed skills are major determinants of this effect, and we conclude that XAI is not a \"one-size-fits-all approach.\" Based on the insight that contextual factors of the decision problem are more important than the type of XAI approach itself, we argue that the use and the effects of explainability in recruiting need a more nuanced perspective, focusing on the fit of explanations with the user's characteristics and preferences.","PeriodicalId":517361,"journal":{"name":"ACM SIGMIS Database: the DATABASE for Advances in Information Systems","volume":"39 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-02-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"ACM SIGMIS Database: the DATABASE for Advances in Information Systems","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1145/3645057.3645062","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
Abstract
The use of conversational agents (CAs) based on artificial intelligence (AI) is becoming more common in the field of recruiting. Organizations are now adopting AI-based CAs for applicant (pre-)selection, but negative news coverage, especially the black-box character of AI, has hindered adoption. So far, little is known about the contextual factors influencing users' perception of AI-based CAs in general and the effect of provided explanations by explainable AI (XAI) in particular. While research on algorithm aversion provides some initial explanations, information regarding the effects of different XAI approaches on different types of decisions on the attitudes of (potential) applicants is scarce. Therefore, in this study, we use a quantitative, quota-representative study (n = 490) to assess the acceptance of CAs in recruiting. By applying an experimental within-subject design, we provide a more nuanced perspective on why and when providing explanations increases user acceptance. We also show that contextual factors such as the type of assessed skills are major determinants of this effect, and we conclude that XAI is not a "one-size-fits-all approach." Based on the insight that contextual factors of the decision problem are more important than the type of XAI approach itself, we argue that the use and the effects of explainability in recruiting need a more nuanced perspective, focusing on the fit of explanations with the user's characteristics and preferences.
基于人工智能(AI)的会话代理(CA)在招聘领域的使用越来越普遍。目前,各组织正在采用基于人工智能的 CA 进行应聘者(预)筛选,但负面新闻报道,尤其是人工智能的黑箱特性,阻碍了 CA 的采用。迄今为止,人们对影响用户对基于人工智能的CA的感知的背景因素知之甚少,尤其是对可解释的人工智能(XAI)所提供的解释的影响知之甚少。虽然有关算法厌恶的研究提供了一些初步解释,但有关不同 XAI 方法对不同类型决策对(潜在)申请人态度的影响的信息却很少。因此,在本研究中,我们采用了定量、定额代表性研究(n = 490)来评估 CA 在招聘中的接受度。通过采用受试者内实验设计,我们提供了一个更细致的视角,来说明为什么以及何时提供解释会提高用户的接受度。我们还表明,情境因素(如被评估技能的类型)是这一效果的主要决定因素,并得出结论:XAI 并非 "放之四海而皆准的方法"。基于决策问题的情境因素比 XAI 方法本身的类型更重要这一见解,我们认为,招聘中可解释性的使用和效果需要一个更加细致入微的视角,重点关注解释与用户特征和偏好的契合度。