Authors:
Thomas Neifer
1
;
2
;
Dennis Lawo
1
;
2
;
Gunnar Stevens
1
;
2
;
Alexander Boden
1
and
Andreas Gadatsch
1
Affiliations:
1
Institut für Verbraucherinformatik, University of Applied Sciences Bonn-Rhein-Sieg, Sankt Augustin, Germany
;
2
Verbraucherinformatik Research Group, University of Siegen, Siegen, Germany
Keyword(s):
Recommender Systems, Food Retail, Repeat Purchase Recommendations, Bayesian Hierarchical Model.
Abstract:
In the course of growing online retailing, recommendation systems have become established that derive recommendations from customers’ purchase histories. Recommending suitable food products can represent a lucrative added value for food retailers, but at the same time challenges them to make good predictions for repeated food purchases. Repeat purchase recommendations have been little explored in the literature. These predict when a product will be purchased again by a customer. This is especially important for food recommendations, since it is not the frequency of the same item in the shopping basket that is relevant for determining repeat purchase intervals, but rather their difference over time. In this paper, in addition to critically reflecting classical recommendation systems on the underlying repeat purchase context, two models for online product recommendations are derived from the literature, validated and discussed for the food context using real transaction data of a Germa
n stationary food retailer.
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