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探索人工智能驱动的商业智能系统在马来西亚保险业面临的挑战。

Exploring the challenges of AI-driven business intelligence systems in the Malaysian insurance industry.

作者信息

Ramachandaran Sharmila, Mahalley Zubaidi, Nuraini Riska, Dhar Bablu Kumar

机构信息

Faculty of Business and Communication, INTI International University & Colleges, Nilai, Negeri Sembilan, Malaysia.

INTI International University & Colleges, Nilai, Negeri Sembilan, Malaysia.

出版信息

F1000Res. 2025 Apr 22;14:452. doi: 10.12688/f1000research.163354.1. eCollection 2025.

DOI:10.12688/f1000research.163354.1
PMID:40575004
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12198725/
Abstract

BACKGROUND

Integrating Artificial Intelligence (AI) with Business Intelligence (BI) systems in the insurance industry holds the potential for enhanced operational efficiency, strategic decision-making, and improved customer experiences. However, the Malaysian insurance sector faces numerous challenges in realizing this potential, including organizational resistance, skill shortages, regulatory complexities, and financial constraints. This study explores the specific challenges encountered in the adoption of AI-driven BI systems within the Malaysian insurance industry.

METHODS

Using an integrated framework that combines the Technology-Organization-Environment (TOE) model and Resource-Based View (RBV), this research examines the internal and external factors that impact AI adoption. A qualitative case study approach was employed, involving in-depth interviews with technical experts, middle management, and senior leaders from key industry players. Thematic analysis of the data identified significant barriers to AI adoption, such as organizational resistance, lack of skilled personnel, and the complexities of navigating regulatory frameworks.

RESULTS

The findings provide a deep understanding of the key challenges faced by Malaysian insurers and highlight areas that require attention, such as leadership commitment, workforce upskilling, technological infrastructure improvements, and policy advocacy.

CONCLUSION

This study adds to the limited academic literature on AI-driven BI adoption in emerging markets and offers practical insights to insurers for overcoming these challenges. By addressing these obstacles, this research contributes to the broader discourse on digital transformation in the insurance sector, offering valuable recommendations for overcoming hurdles in AI adoption while maintaining compliance and ensuring customer-centric approaches.

摘要

背景

在保险业中将人工智能(AI)与商业智能(BI)系统相结合,具有提高运营效率、战略决策能力和改善客户体验的潜力。然而,马来西亚保险行业在实现这一潜力方面面临诸多挑战,包括组织阻力、技能短缺、监管复杂性和资金限制。本研究探讨了马来西亚保险行业在采用人工智能驱动的商业智能系统过程中遇到的具体挑战。

方法

本研究采用结合技术-组织-环境(TOE)模型和基于资源的观点(RBV)的综合框架,考察影响人工智能采用的内部和外部因素。采用定性案例研究方法,对关键行业参与者的技术专家、中层管理人员和高级领导进行了深入访谈。对数据进行主题分析,确定了人工智能采用的重大障碍,如组织阻力、缺乏技术人员以及监管框架的复杂性。

结果

研究结果使我们深入了解了马来西亚保险公司面临的关键挑战,并突出了需要关注的领域,如领导承诺、员工技能提升、技术基础设施改善和政策倡导。

结论

本研究丰富了新兴市场中关于采用人工智能驱动的商业智能的有限学术文献,并为保险公司克服这些挑战提供了实用见解。通过解决这些障碍,本研究有助于保险行业关于数字转型的更广泛讨论,为克服人工智能采用中的障碍、保持合规性并确保以客户为中心的方法提供了有价值的建议。

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本文引用的文献

1
Stagewise Overview of Issues Influencing Organizational Technology Adoption and Use.影响组织技术采用与使用的问题的分阶段概述。
Front Psychol. 2021 Mar 17;12:630145. doi: 10.3389/fpsyg.2021.630145. eCollection 2021.
2
World Medical Association Declaration of Helsinki: ethical principles for medical research involving human subjects.《世界医学协会赫尔辛基宣言:涉及人类受试者的医学研究伦理原则》
JAMA. 2013 Nov 27;310(20):2191-4. doi: 10.1001/jama.2013.281053.
3
Sample size in qualitative research.定性研究中的样本量
Res Nurs Health. 1995 Apr;18(2):179-83. doi: 10.1002/nur.4770180211.