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Original scientific article

ON LEVERAGING GENERATIVE ARTIFICIAL INTELLIGENCE (GENAI) FOR BEHAVIOR LEARNING AND PERSONALIZED MARKETING OPTIMIZATION

By
Bsmah Alsulami Orcid logo ,
Bsmah Alsulami

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Budoor Alwated Orcid logo ,
Budoor Alwated

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Khadijah Barashid Orcid logo ,
Khadijah Barashid

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Manal Abdullah Orcid logo ,
Manal Abdullah

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Monerah AlOsaimi Orcid logo ,
Monerah AlOsaimi

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Samah Alhusayni Orcid logo
Samah Alhusayni

Department of Information Systems, King Abdlaziz University , Jeddah , Saudi Arabia

Abstract

Generative AI (GenAI), especially GPT-3.5-turbo, has transformed the e-commerce marketing process 
because it offers personalized learning experiences and improves the customer experience. In this paper, 
we discuss the use of GenAI in consumer behavior analysis and the development of customized marketing 
strategies. It has been observed that behavioral characteristics, such as purchase frequency and 
expenditure, are essential for customizing marketing activities, and that there is a strong correlation 
between these variables and customer satisfaction. The prediction of customer satisfaction was used as a 
Random Forest classification model and the results have shown that the model can predict customer 
satisfaction with an accuracy of 97% with the influence of purchase frequency and total spend being the 
most influential predictors. GenAI is an excellent way to automate content creation, engage more 
customers, and retain them. Importantly, personalized marketing messages generated by GenAI were 
more likely to engage consumers, mainly when used to address satisfied customers with upsell 
suggestions and to incentivize neutral and dissatisfied customers. Nevertheless, challenges remain 
regarding the authenticity of the content and the privacy of the data. The paper highlights the potential of 
GenAI to transform the nature of personalized e-commerce marketing by integrating data and real-time 
content development to increase customer satisfaction and business results.

References

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Citation

This is an open access article distributed under the  Creative Commons Attribution Non-Commercial License (CC BY-NC) License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. 

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