In the AI of the Beholder—A Qualitative Study of HR Professionals’ Beliefs about AI-Based Chatbots and Decision Support in Candidate Pre-Selection
Abstract
:1. Introduction
2. Background
3. Method
4. Result
4.1. Scope of AI and Associated Use Cases
4.1.1. Providing Information: Use Cases
4.1.2. Gathering of Data: Use Cases
I think he [the applicant] gets support because he doesn’t have to think too much. Because he is immediately told what else we need from, him. So he feels in good hands because he can’t forget anything and because he knows immediately where he is standing. Because the chatbot says: “You’ve done everything you have to do. Thank you very much and someone will get in touch with you.” I think the applicant will leave the interaction happier.[E19]
4.1.3. Candidate Exploration: Use Cases
Where I could well imagine it (AI), is when there are many potential candidates who did not apply but who are in some databases. To search these databases according to these very criteria and then to get a shortlist or longlist of candidates.[E8]
4.1.4. Matching and (Pre-)Selection: Use Cases
Calculating a score based on the basic requirements that I have, for example: Bachelor’s degree, at least one year of experience, things like that. You make a list of who fulfils these criteria and to what percentage. (...) I save time or have it presented more clearly who has the biggest match. And on the basis of that, I can either start making a shortlist or invite people directly.[E4]
4.2. Definition of Instruction: Manual versus Automatic
I think that an AI has to be programmed. Assuming you would program the AI in a way that it eliminates males from the process. Or a matching below 50 percent. Then that has to be in the code, that has to be captured somewhere, programmed into the AI. (...) I believe otherwise the AI can’t throw them out.[E5-3]
4.2.1. Barrier: Low Benefit-Effort-Ratio
We have few positions to none that have a large number of applications. (...) The mass of applications needed for an added value from automation or a decision support tool is not there.[E6]
Maintenance costs are a disadvantage. Somebody has to continuously take care of this technological achievement and provide content. (...) I have the feeling that you have to do it right or not at all, because a chatbot with old info does not help anybody.[E12]
4.2.2. Barrier: Fear of Losing Applicants
Very personal topics can come up in job interviews. Sometimes I think to myself, I didn’t really want to know that, but obviously, you’ve got into a topic that moves the applicant personally. And as an interviewer, you have to react accordingly. And in such a situation, you have to show empathy. (...) And it’s hard for me to imagine how that would work with an avatar.[E5_2]
4.2.3. Barrier: Fear of Replacement
If I’m honest, you can clarify everything with the chatbot. You have to program it correctly. If you can manage that, then a lot is possible with the chatbot. Recruiting in particular, except for the interpersonal, is a part that can generally be taken over by chatbots, AI at some point. (...) This is a relief on the one hand, but on the other hand, jobs are eliminated.[E11]
I think AI has a lot of potential that you can use. I stand by my statement that AI can and should only support and will in my view never be able to make decisions without humans who must be significantly involved in the decision-making process.[E8]
5. Discussion
5.1. Theoretical Implications
5.2. Practical Implications
6. Limitation and Future Research Directions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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ID | Industry | Experience in Recruiting |
---|---|---|
E0 | HR consulting | 22 years |
E1 | Research and development | 3 years |
E2 | Media | 2 years |
E3 | Construction, procurement, printing centre, facility management and cleaning, and IT | 5 years |
E4 | Financial services | 1 year |
E5_1 | Automotive industry | 3 years |
E5_2 | Automotive industry | 12 years |
E5_3 | Automotive industry | 7 years |
E6 | Audit, consulting, financial advisory, risk advisory, and tax | 10 years |
E7 | Electrical and electronics industry | 5 years |
E8 | Intralogistics | 22 years |
E9 | Paper industry, corrugated board industry, and packaging industry | 4 years |
E10 | Automotive industry | 10 years |
E11 | Metal industry, machine, and plant engineering | 12 years |
E12 | Healthcare | 12 years |
E13_1 | Public service and representation of interests | 10 years |
E13_2 | Public service and representation of interests | 20 years |
E13_3 | Public service and representation of interests | 5 years |
E14 | Telecommunications, IT, and mobile communications | 10 years |
E15 | Research | 30 years |
E16 | Food production and trade | 12 years |
E17 | Management and technology consulting | 1 year |
E18 | Staffing service | 4 years |
E19 | IT | 7 years |
E20 | Insurance | n.a. |
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Malin, C.; Kupfer, C.; Fleiß, J.; Kubicek, B.; Thalmann, S. In the AI of the Beholder—A Qualitative Study of HR Professionals’ Beliefs about AI-Based Chatbots and Decision Support in Candidate Pre-Selection. Adm. Sci. 2023, 13, 231. https://doi.org/10.3390/admsci13110231
Malin C, Kupfer C, Fleiß J, Kubicek B, Thalmann S. In the AI of the Beholder—A Qualitative Study of HR Professionals’ Beliefs about AI-Based Chatbots and Decision Support in Candidate Pre-Selection. Administrative Sciences. 2023; 13(11):231. https://doi.org/10.3390/admsci13110231
Chicago/Turabian StyleMalin, Christine, Cordula Kupfer, Jürgen Fleiß, Bettina Kubicek, and Stefan Thalmann. 2023. "In the AI of the Beholder—A Qualitative Study of HR Professionals’ Beliefs about AI-Based Chatbots and Decision Support in Candidate Pre-Selection" Administrative Sciences 13, no. 11: 231. https://doi.org/10.3390/admsci13110231