Assessing an on-site customer profiling and hyper-personalization system prototype based on a deep learning approach

被引:23
作者
Micu, Adrian [1 ]
Capatina, Alexandru [1 ]
Cristea, Dragos Sebastian [1 ]
Munteanu, Dan [1 ]
Micu, Angela-Eliza [2 ]
Sarpe, Daniela Ancuta [1 ]
机构
[1] Dunarea de Jos Univ Galati, Str Traian 89,B3B,Sc 2,Ap 22, Galati 800003, Romania
[2] Ovidius Univ Constanta, Constanta, Romania
关键词
Artificial intelligence; Deep learning; Computer vision; Hyper-personalization; Facial recognition; MODERATING ROLE; BIG DATA; ANALYTICS; SERVICES; FUTURE; GENDER; FSQCA;
D O I
10.1016/j.techfore.2021.121289
中图分类号
F [经济];
学科分类号
02 ;
摘要
The development of artificial intelligence (AI) technologies is proceeding fast across many fields. Based on a deep learning approach, we propose a prototype of an on-site customer profiling and hyper-personalization system (OSCPHPS) targeted at marketing professionals. We propose an AI platform to create customer profiles during their physical presence in stores. The idea of the OSCPHPS prototype is to automatically detect and gather customer data directly from the store, essentially completing customer profiles containing gender, age, personality, emotions, and products they interacted with or bought, irrespective of where they are in the store. Each buying operation could generate an anonymous customer profile. Therefore, for every product sold, the system will track multiple customer-generated profiles of the people who bought that product. These kinds of data offer endless further possibilities for the business. Through a configurational study conducted via fsQCA methodology, we assessed the interest in the OSCPHPS prototype on the part of marketing managers of clothes & fashion stores located in different European countries. Based on these live generated profiles, we could further enhance the OSCPHPS system by adding support for customer segmentation, strategic product campaigns, live product recommendation, analysis of emotions toward a product or a category of products, sales forecasts, and personalized store space enhancements based on augmented reality, customer exploratory statistics and customer purchasing patterns.
引用
收藏
页数:12
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