TY - JOUR
T1 - AI-enabled consumer digital twins as a platform for research aimed at enhancing customer experience
AU - Hornik, Jacob
AU - Rachamim, Matti
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025
Y1 - 2025
N2 - Consumer behavior is monitored and analyzed by innumerable obtrusive and non-obtrusive autonomous devices, technologies, surveys, models, and software. In recent years, with the advent of digitization, the research of consumer behavior has undergone a major transformation, yielding complex, extensive, and diverse consumer data. This data diversity is liable to hinder consumer research. Therefore, there is a clear need to integrate and synthesize the large-scale data centers conforming to predefined decision rules and research objectives. Against this backdrop, this contribution proposes to the marketing and consumer research community a new platform for data fusion and consumer modeling—consumer digital twins (CDTs). Although numerous research studies have been published on human digital twins (HDTs), none have been conducted in the management and consumer domains. The study aims to bridge two perspectives: on the one hand, the authors acknowledge the value of CDT as a consumer data fusion platform, while on the other hand, they build on previous scholarship to propose a conceptual framework for implementing the platform in future research, using as an example a CDT designed for customer journey optimization.
AB - Consumer behavior is monitored and analyzed by innumerable obtrusive and non-obtrusive autonomous devices, technologies, surveys, models, and software. In recent years, with the advent of digitization, the research of consumer behavior has undergone a major transformation, yielding complex, extensive, and diverse consumer data. This data diversity is liable to hinder consumer research. Therefore, there is a clear need to integrate and synthesize the large-scale data centers conforming to predefined decision rules and research objectives. Against this backdrop, this contribution proposes to the marketing and consumer research community a new platform for data fusion and consumer modeling—consumer digital twins (CDTs). Although numerous research studies have been published on human digital twins (HDTs), none have been conducted in the management and consumer domains. The study aims to bridge two perspectives: on the one hand, the authors acknowledge the value of CDT as a consumer data fusion platform, while on the other hand, they build on previous scholarship to propose a conceptual framework for implementing the platform in future research, using as an example a CDT designed for customer journey optimization.
KW - AI
KW - Consumer digital twins
KW - Data fusion
KW - Digital twins
KW - Human-in-the-loop
UR - http://www.scopus.com/inward/record.url?scp=105004932204&partnerID=8YFLogxK
U2 - 10.1007/s11301-025-00527-3
DO - 10.1007/s11301-025-00527-3
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AN - SCOPUS:105004932204
SN - 2198-1620
JO - Management Review Quarterly
JF - Management Review Quarterly
ER -