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How HR Recruiters' Artificial Intelligence Awareness Effects Job Performance? Job Insecurity as Mediator

Year 2025, Volume: 10 Issue: 2, 114 - 128

Abstract

The scope of the present research is to evaluate the level of Artificial Intelligence (AI) awareness among Human Resources (HR) Recruiters in the Middle East and its impact on their job performance and job insecurity, besides to explore whether job insecurity represents as a mediator in this relationship. The research used correlation, ANOVA and regression tests on data collected from 344 HR Recruiters to assess both direct and mediating relationships between the variables. SPSS 21 program was preferred in the analyses. The findings indicate that job performance had a negative correlation with AI awareness and a positive correlation with job insecurity. AI awareness was found to have a positive effect on job insecurity, and job insecurity was shown to partially mediate the relationship between AI awareness and job performance. This study provides valuable insights and contributes to the field of research on the effects of AI awareness on HR Recruiters’ job insecurity and job performance.

Ethical Statement

Bu çalışma için İstanbul Aydın Üniversitesinde ilgili birimden etik kurul onayı alınmıştır.

References

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  • Bai, S., Zhang, X., Yu, D., & Yao, J. (2024). Assist me or replace me? Uncovering the influence of AI awareness on employees’ counterproductive work behaviors. Frontiers in Public Health, 12, Article 1449561. https://doi.org/10.3389/fpubh.2024.1449561
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İK İşe Alma Uzmanlarının Yapay Zeka Farkındalığı İş Performansını Nasıl Etkiler? Aracı Olarak İş Güvencesizliği

Year 2025, Volume: 10 Issue: 2, 114 - 128

Abstract

Bu araştırmanın amacı, Orta Doğu'daki İnsan Kaynakları (İK) İşe Alma Uzmanları arasında Yapay Zeka (YZ) farkındalık düzeyini ve bunun iş performansı ve iş güvencesizliği üzerindeki etkisini değerlendirmek ve ayrıca iş güvencesizliğinin bu ilişkide bir aracı görevi görüp görmediğini araştırmaktır. Araştırmada, değişkenler arasındaki hem doğrudan hem de aracılık eden ilişkileri değerlendirmek için 344 İK İşe Alma Uzmanından toplanan veriler üzerinde korelasyon, ANOVA ve regresyon testleri yapılmıştır. Analizlerde SPSS 21 programı tercih edilmiştir. Bulgular, iş performansının YZ farkındalığı ile negatif, iş güvencesizliği ile pozitif bir korelasyonu olduğunu göstermektedir. Araştırmada, YZ farkındalığının iş güvencesizliği üzerinde pozitif bir etkisi olduğu ve iş güvencesizliğinin YZ farkındalığı ile iş performansı arasındaki ilişkiye kısmen aracılık ettiği gösterilmiştir. Bu çalışma, YZ farkındalığının İK İşe Alma Uzmanlarının iş güvencesizliği ve iş performansı üzerindeki etkilerine ilişkin araştırma alanına değerli içgörüler sağlamakta ve katkıda bulunmaktadır.

References

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  • Anand, A., Dalmasso, A., Vessal, S. R., Parameswar, N., Rajasekar, J., & Dhal, M. (2023). The effect of job security, insecurity, and burnout on employee organizational commitment. Journal of Business Research, 162, Article 113843. https://doi.org/10.1016/j.jbusres.2023.113843
  • Armstrong, M. (2014). Armstrong’s handbook of human resource management practice (13th ed.). Kogan Page.
  • Atrian, F., & Ghobbeh, M. (2023). Technostress and employee performance in AI-driven environments. Journal of Organizational Psychology, 45(2), 101–117. https://ideas.repec.org/p/arx/papers/2311.07072.html
  • Bai, S., Zhang, X., Yu, D., & Yao, J. (2024). Assist me or replace me? Uncovering the influence of AI awareness on employees’ counterproductive work behaviors. Frontiers in Public Health, 12, Article 1449561. https://doi.org/10.3389/fpubh.2024.1449561
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  • Basu, S., Majumdar, B., Mukherjee, K., Munjal, S., & Palaksha, C. (2023). Artificial intelligence–HRM interactions and outcomes: A systematic review and causal configurational explanation. Human Resource Management Review, 33(1), Article 100893. https://doi.org/10.1016/j.hrmr.2022.100893
  • Berente, N., Gu, B., Recker, J, & Santhanam, R. (2021). Managing artificial intelligence. MIS Quarterly, 45(3), 1433–1450. https://doi.org/10.25300/MISQ/2021/16274
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  • Breaugh, J. A., & Starke, M. (2000). Research on employee recruitment: So many studies, so many remaining questions. Journal of Management, 26(3), 405–434. https://doi.org/10.1177/014920630002600303
  • Brougham, D., & Haar, J. (2018). Smart technology, artificial intelligence, robotics, and algorithms (STARA): Employees’ perceptions of our future workplace. Journal of Management & Organization, 24(2), 239–257. https://doi.org/10.1017/jmo.2016.55
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  • Chen, Z. (2023). Ethics and discrimination in artificial intelligence-enabled recruitment practices. Humanities and Social Sciences Communications, 10, Article 20. https://doi.org/10.1057/s41599-023-02079-x
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Details

Primary Language English
Subjects Strategy, Management and Organisational Behaviour (Other)
Journal Section Research Article
Authors

Nura Issa This is me 0009-0008-7436-8648

Tolga Türköz 0000-0002-0805-0219

Early Pub Date December 2, 2025
Publication Date December 2, 2025
Submission Date April 15, 2025
Acceptance Date November 17, 2025
Published in Issue Year 2025 Volume: 10 Issue: 2

Cite

APA Issa, N., & Türköz, T. (2025). How HR Recruiters’ Artificial Intelligence Awareness Effects Job Performance? Job Insecurity as Mediator. JOEEP: Journal of Emerging Economies and Policy, 10(2), 114-128.

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