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Implications of AI-based robo-advisory for private banking investment advisory

Author

Listed:
  • Christian Dietzmann
  • Timon Jaeggi
  • Rainer Alt

Abstract

Purpose - AI-based robo-advisory (RA) represents a FinTech application that is already replacing retail investment advisors. In private banking (PB), clients also increasingly expect service provision across different digital channels, but with a higher degree of personalization. Hence, the present study investigates the impact of intelligent RA on the PB investment advisory process to derive both process (re)design knowledge and strategic guidance for artificial intelligence (AI) usage for PB investment advisory. Design/methodology/approach - The present study applies an AI process impact analysis approach by decomposing AI-based RA into three AI application types: conversational agent, customer segmentation and predictive analytics. The analysis results along a reference PB investment advisory process reveal sub-process transformations which are applied for process redesign integrating AI. Findings - The study results imply that AI systems (1) enable seamless client journeys, (2) increase advisor flexibility, (3) support the client–advisor relationship by applying an omnichannel approach and (4) demand advisor skills to be augmented with technical and statistical knowledge. Originality/value - The research study contributes (1) an AI process impact analysis approach, (2) derives process (re)design knowledge for AI deployment and (3) develops strategic guidance for AI usage in PB investment advisory.

Suggested Citation

  • Christian Dietzmann & Timon Jaeggi & Rainer Alt, 2023. "Implications of AI-based robo-advisory for private banking investment advisory," Journal of Electronic Business & Digital Economics, Emerald Group Publishing Limited, vol. 2(1), pages 3-23, January.
  • Handle: RePEc:eme:jebdep:jebde-09-2022-0037
    DOI: 10.1108/JEBDE-09-2022-0037
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