COLLEGE PARK, Md., July 30, 2025 /PRNewswire/ — Marketing researchers at the University of Maryland’s Robert H. Smith School of Businessย have produced an artificial intelligence-based model that they say “predicts digital customer behavior and delivers personalized marketing insights across complex, multi-touchpoint journeysโoutperforming traditional methods in both precision and ROI.”
Forthcoming in the Journal of Marketing Research, “AI for Customer Journeys: A Transformer Approach,“ย applies transformer-based modelsโoriginally developed for language processingโto analyze complex, multi-channel sequences of customer interactions. “Transformers give us the ability to see the journey as a whole, not just as a series of isolated interactions. That’s a major leap in marketing analytics, says UMD Smith Dean’s Chair in Marketing Science P.K. Kannan, who co-authored the work with Smith marketing PhD candidate Zipei Lu.
Unlike traditional journey methods and models (such as LSTMs and Hidden Markov and Poisson Point Process models), Kannan and Lu say their approach “captures both theย timing and nature of each touchpoint, making it ideal for today’s fragmented, multi-touch marketing environments.”
A central contribution of the paper is the integration ofย customer-level heterogeneityย within the transformer architecture. This allows the model to deliverย individualized insightsย into how different customers respond to marketing actions over time.
“We designed the model to capture the complexity and individuality of digital customer journeysโsomething traditional models often overlook,” says Lu.
Kannan adds, “Incorporating customer heterogeneity allows us to move beyond one-size-fits-all journey maps. We’re now able to understand how different customers respond over timeโand act on it.”
The authors used detailed journey data from a large hospitality firm, covering over 92,000 users and more than 500,000 touchpoints.
The resulting model, says Lu, “doesn’t just tell us who’s likely to convert. It tells us why, and more importantly, when to act.”
In addition to predictive performance, the model offers rich managerial insights that:
- Distinguish between firm-initiated and customer-initiatedย touchpoints
- Identify optimal window for marketing interventionย
- Enable latent profiling to distinguish behavioral patterns, such as last-minute bookings vs. early planners
“This approach turns raw customer data into tailored insights that marketers can actually useโto optimize interventions, allocate budgets, and drive conversions,” Kannan says.
By combining deep learning with interpretability and personalization, the authors say their research advances marketing analytics towardย real-time, data-driven decision-makingโempowering managers toย maximize ROI and customer engagementย in increasingly complex digital ecosystems.
About theย University ofย Maryland’sย Robert H. Smith School of Business
The Robert H. Smith School of Business is an internationally recognized leader in management education and research. One of 12 colleges and schools at theย University ofย Maryland,ย College Park, the Smith School offers undergraduate, full-time and flex MBA, executive MBA, online MBA, business master’s, PhD and executive education programs, as well as outreach services to the corporate community. The school offers its degree, custom and certification programs in learning locations inย North Americaย andย Asia.
Contact:ย Greg Muraski,ย [email protected]
View original content:https://www.prnewswire.com/news-releases/umd-smith-study-produces-transformer-based-ai-approach-to-predicting-customer-behavior-302517746.html
SOURCE University of Maryland’s Robert H. Smith School of Business

