Submitted:
26 February 2026
Posted:
27 February 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Theoretical Background and Hypotheses Development
- provide data on the basis of which a human recruiter makes further decisions or actions, but can also make independent decisions;
- provide assistance when it recognizes that a person needs it, or regardless of the need;
- provide assistance only at the user's request, or regardless of the need;
- provide assistance with either specific problems or a complete solution;
- provide information, arguments, or criteria needed to make a decision, or indicate what decision should be made.
3. Materials and Methods
- Some items described AI assistance (e.g., “I wish the AI would help me create questions to ask candidates in order to diagnose their competencies”; “I wish the AI would – when I have doubts – suggest arguments supporting my decision regarding which candidates performed well at a given stage”). Other items explicitly referred to AI making decisions (e.g., “I wish the AI would make the decision regarding the evaluation of specific competencies of the candidate”; “I wish the AI would make the decision regarding which candidates should be invited to the next stage”). Items of both types were mixed.
- Some items reflected the assumption that AI-generated decisions are substantively accurate and may enhance recruiter effectiveness (e.g., “I wish the AI would suggest a decision regarding which candidates should be invited to the final stage”; “I wish the AI would make the decision—when I have doubts—regarding which candidates performed well at a given stage”). By contrast, items in which AI merely provided neutral assistance or information without suggesting or making a decision were not assumed to directly increase effectiveness (e.g., generating interview questions or discussing relevant evaluation criteria without formulating a conclusion). For example - „I wish the AI would help me create questions to ask candidates in order to diagnose their competencies” or “I wish the AI would talk to me – when I have doubts and difficulties in making up my mind – about things that are important in deciding which candidates performed well at a given stage of the selection procedure.”
- Two items were designed to capture relational engagement through dialogue not strictly limited to decision output: “I wish the AI would – when I have doubts – talk to me about what is important in deciding which candidates performed well at a given stage;” “I wish the AI would – when I have doubts – teach me what factors I should consider when deciding which candidates performed well at a given stage.”
4. Results
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| (X)AI | (Explainable) Artificial Intelligence |
| SDT | Self-determination theory |
| SHAP | .SHapley Additive exPlanations |
| TAM | Technology Acceptance Model |
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| Characteristics | N=120 | Percentage |
| Gender | ||
| Female | 90 | 75.0 |
| Male | 30 | 25.0 |
| Age | ||
| Under 26 | 15 | 12.5 |
| 26 –35 | 34 | 28.3 |
| 36 –45 | 53 | 44.2 |
| 46 or older | 18 | 15.0 |
| Level of education | ||
| High school degree | 6 | 5.0 |
| Bachelor degree | 32 | 26.7 |
| Master degree | 82 | 68.3 |
| Length of professional experience in the HR area | ||
| Less than 1 year | 14 | 11.7 |
| 1–5 years | 34 | 28.3 |
| 6 –10 years | 25 | 20.8 |
| 11 –20 years | 32 | 26.7 |
| More than 20 years | 15 | 12.5 |
| Company size (number of employees) | ||
| Less than 50 | 16 | 13.3 |
| 50–100 | 12 | 10.0 |
| 101–250 | 20 | 16.7 |
| 251–500 | 10 | 8.3 |
| More than 500 | 62 | 51.7 |
| Hypothesis | Variables | M | SD | t(119) | Sig. | Cohen’s d |
| H1 | Earlier | 4.01 | 0.93 | 7.391 | <0.001 | 0.994 |
| Later | 3.62 | 0.87 | (large) | |||
| H2 | Assistance | 3.89 | 0.84 | 11.316 | <0.001 | 0.477 |
| Replacement | 2.81 | 1.17 | (medium) |
| Stages | Replacement (categorized) | Company_size | Mean | SD | N |
| Earlier | No |
Up to 500 employees | 3.53 | 1.10 | 35 |
| Above 500 employees | 4.17 | 0.91 | 38 | ||
| Total | 3.86 | 1.05 | 73 | ||
| Yes |
Up to 500 employees | 4.15 | 0.60 | 23 | |
| Above 500 employees | 4.33 | 0.67 | 24 | ||
| Total | 4.24 | 0.64 | 47 | ||
| Total |
Up to 500 employees | 3.77 | 0.98 | 58 | |
| Above 500 employees | 4.24 | 0.82 | 62 | ||
| Total | 4.01 | 0.93 | 120 | ||
| Later |
No |
Up to 500 employees | 3.21 | 0.96 | 35 |
| Above 500 employees | 3.60 | 0.90 | 38 | ||
| Total | 3.42 | 0.95 | 73 | ||
| Yes |
Up to 500 employees | 4.00 | 0.65 | 23 | |
| Above 500 employees | 3.90 | 0.57 | 24 | ||
| Total | 3.95 | 0.61 | 47 | ||
| Total |
Up to 500 employees | 3.53 | 0.93 | 58 | |
| Above 500 employees | 3.72 | 0.80 | 62 | ||
| Total | 3.62 | 0.87 | 120 |
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