Loyal Consumers or One-Time Deal Hunters: Repeat Buyer Prediction for E-Commerce

2019 | conference paper. A publication with affiliation to the University of Göttingen.

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​Zhao, Bo, Atsuhiro Takasu, Ramin Yahyapour, and Xiaoming Fu. "Loyal Consumers or One-Time Deal Hunters: Repeat Buyer Prediction for E-Commerce​." ​In 2019 International Conference on Data Mining Workshops (ICDMW), ​1080​-1087. ​IEEE, ​2019. https://doi.org/10.1109/ICDMW.2019.00158.

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Authors
Zhao, Bo; Takasu, Atsuhiro; Yahyapour, Ramin ; Fu, Xiaoming 
Abstract
Merchants sometimes run big promotions (e.g., discounts or cash coupons) on particular dates (e.g., Boxing-day Sales, "Black Friday" or "Double 11 (Nov 11th)", in order to attract a large number of new buyers. Unfortunately, many of the attracted buyers are one-time deal hunters, and these promotions may have little long lasting impact on sales. To alleviate this problem, it is important for merchants to identify who can be converted into repeated buyers. By targeting on these potential loyal customers, merchants can greatly reduce the promotion cost and enhance the return on investment (ROI). It is well known that in the field of online advertising, customer targeting is extremely challenging, especially for fresh buyers. With the long-term user behavior log accumulated by Tmall.com, we get a set of merchants and their corresponding new buyers acquired during the promotion on the "Double 11" day. Our goal is to predict which new buyers for given merchants will become loyal customers in the future. In other words, we need to predict the probability that these new buyers would purchase items from the same merchants again within 6 months. A data set containing around 200k users is given for training, while the other of similar size for testing. We extracted as many features as possible and find the key features to train our models. We proposed merged model of different classification models and merged lightGBM model with different parameter sets. The experimental results show that our merged models can bring about great performance improvements comparing with the original models.
Issue Date
2019
Publisher
IEEE
Organization
Gesellschaft für wissenschaftliche Datenverarbeitung 
Conference
2019 International Conference on Data Mining Workshops (ICDMW)
ISBN
978-1-7281-4896-0
Conference Place
Beijing, China
Event start
2019-11-08
Event end
2019-11-11
Language
English

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