PhD defence F.J.L. (Luuk) van Maasakkers

Deep Learning Approaches for Customer Analytics

On Thursday 23 April 2026 F.J.L. van Maasakkers will defend the doctoral thesis titled: Deep Learning Approaches for Customer Analytics

Promotor
Prof.dr. D. Fok
Promotor
Prof.dr. A.C.D. Donkers
Date
Thursday 23 Apr 2026, 13:00 - 14:30
Type
PhD defence
Space
Senate Hall
Building
Erasmus Building
Location
Campus Woudestein
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Below is a brief summary of the dissertation:

In recent years, large language models like ChatGPT have become part of everyday life for many of us. Transformers (the ‘T’ in ChatGPT) are advanced types of neural networks that form the core of these large language models. Although transformers are particularly known for their capability to learn language patterns, their design is not limited to processing language sequences. In fact, transformers can be trained to learn patterns in any type of sequence, and generate new sequences based on these learned patterns. 
This flexibility opens new possibilities for customer analytics. In our research, we apply modern deep learning techniques (like transformers)  to understand shopping behavior. For example, we analyze the scenario of customers filling a shopping basket in an online supermarket. Similar to how transformers can learn to predict a missing word in a sentence given the context, we can also train them to predict a missing product in a shopping basket given the products already in the basket. Those predictions can then be used for personalized recommendations to the customer, which can increase revenue and improve the customer experience. 
We demonstrate that our deep learning approach outperforms traditional, statistical marketing methods in predicting purchases. The same holds for the approaches we propose to model other types of customer behavior, such as online search and click behavior prior to a purchase. Together, our findings show how advanced deep learning techniques can enable companies to better understand their customers in an increasingly digital marketplace.

More information

The public defence will begin exactly at 13.00 hrs. The doors will be closed once the public defence starts, latecomers may be able to watch on the screen outside. There is no possibility of entrance during the first part of the ceremony. Due to the solemn nature of the ceremony, we recommend that you do not take children under the age of 6 to the first part of the ceremony.

A live stream link has been provided to the candidate.

 

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