HCAISep 11, 2023

A Co-design Study for Multi-Stakeholder Job Recommender System Explanations

arXiv:2309.05507v111 citationsh-index: 30
Originality Synthesis-oriented
AI Analysis

This work addresses the need for tailored explanations in high-risk recruitment AI, though it is incremental as it builds on existing XAI research by focusing on stakeholder-specific preferences.

The study tackled the challenge of designing explainable AI for job recommender systems by identifying differing explanation preferences among candidates, recruiters, and companies, leading to guidelines for multi-stakeholder explanation interfaces.

Recent legislation proposals have significantly increased the demand for eXplainable Artificial Intelligence (XAI) in many businesses, especially in so-called `high-risk' domains, such as recruitment. Within recruitment, AI has become commonplace, mainly in the form of job recommender systems (JRSs), which try to match candidates to vacancies, and vice versa. However, common XAI techniques often fall short in this domain due to the different levels and types of expertise of the individuals involved, making explanations difficult to generalize. To determine the explanation preferences of the different stakeholder types - candidates, recruiters, and companies - we created and validated a semi-structured interview guide. Using grounded theory, we structurally analyzed the results of these interviews and found that different stakeholder types indeed have strongly differing explanation preferences. Candidates indicated a preference for brief, textual explanations that allow them to quickly judge potential matches. On the other hand, hiring managers preferred visual graph-based explanations that provide a more technical and comprehensive overview at a glance. Recruiters found more exhaustive textual explanations preferable, as those provided them with more talking points to convince both parties of the match. Based on these findings, we describe guidelines on how to design an explanation interface that fulfills the requirements of all three stakeholder types. Furthermore, we provide the validated interview guide, which can assist future research in determining the explanation preferences of different stakeholder types.

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