Predicting interpurchase time in a retail environment using customer-product networks: an empirical study and evaluation
Predicting interpurchase time in a retail environment using customer-product networks: an empirical study and evaluation
In predictive analytics and statistics, entities are frequently treated as individual actors. However, in reality this assumption is not valid. In the context of retail, similar customers will behave and thus also purchase similarly to each other. By combining their behavior in an intelligent way, based on transaction history, we can leverage these connections and improve our ability to predict purchase outcomes. As such, we can create customer-product networks from which we can deduce information on customers expressing similar purchasing behavior. This allows us to exploit their preferences and predict which products are going to be sold significantly less often. We want to use this information mainly for gaining novel marketing insights on products. For example, if customers refrain from buying products this might be due to contextual reasons such as new complements or supplements, or new nearby shops. By using these networks on data from an offline European retail corporation, we are able to boost performance of the predictive models by 6% and the identification of these specific products by 20%. This indicates that the development of customer-product graphs in retail can lead to improved marketing intelligence. To our knowledge, this is one of the first studies to use customer-product networks for predictive modeling in an offline retail setting. Furthermore, we suggest an extensive set of product and network features which can guide future researchers and practitioners in their model development.
Customer-product graph, Interpurchase time, Offline retail, Purchase behavior, Social network analytics, Transactional data
22-32
Lismont, Jasmien
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Ram, Sudha
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Vanthienen, Jan
6f3d818f-0fce-46fa-966b-160e645caf6d
Lemahieu, Wilfried
be4bae3f-12b9-417a-91a1-c3c264ffe068
Baesens, Bart
f7c6496b-aa7f-4026-8616-ca61d9e216f0
15 August 2018
Lismont, Jasmien
ae828817-8188-4686-89b3-2438fa3ee3aa
Ram, Sudha
b379c542-b5c6-43d8-aadc-31f1288141dc
Vanthienen, Jan
6f3d818f-0fce-46fa-966b-160e645caf6d
Lemahieu, Wilfried
be4bae3f-12b9-417a-91a1-c3c264ffe068
Baesens, Bart
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Lismont, Jasmien, Ram, Sudha, Vanthienen, Jan, Lemahieu, Wilfried and Baesens, Bart
(2018)
Predicting interpurchase time in a retail environment using customer-product networks: an empirical study and evaluation.
Expert Systems with Applications, 104, .
(doi:10.1016/j.eswa.2018.03.016).
Abstract
In predictive analytics and statistics, entities are frequently treated as individual actors. However, in reality this assumption is not valid. In the context of retail, similar customers will behave and thus also purchase similarly to each other. By combining their behavior in an intelligent way, based on transaction history, we can leverage these connections and improve our ability to predict purchase outcomes. As such, we can create customer-product networks from which we can deduce information on customers expressing similar purchasing behavior. This allows us to exploit their preferences and predict which products are going to be sold significantly less often. We want to use this information mainly for gaining novel marketing insights on products. For example, if customers refrain from buying products this might be due to contextual reasons such as new complements or supplements, or new nearby shops. By using these networks on data from an offline European retail corporation, we are able to boost performance of the predictive models by 6% and the identification of these specific products by 20%. This indicates that the development of customer-product graphs in retail can lead to improved marketing intelligence. To our knowledge, this is one of the first studies to use customer-product networks for predictive modeling in an offline retail setting. Furthermore, we suggest an extensive set of product and network features which can guide future researchers and practitioners in their model development.
Text
Predicting Interpurchase Time in a Retail Environment Lismont
- Accepted Manuscript
More information
Accepted/In Press date: 11 March 2018
e-pub ahead of print date: 12 March 2018
Published date: 15 August 2018
Keywords:
Customer-product graph, Interpurchase time, Offline retail, Purchase behavior, Social network analytics, Transactional data
Identifiers
Local EPrints ID: 421601
URI: http://eprints.soton.ac.uk/id/eprint/421601
ISSN: 0957-4174
PURE UUID: 37f8adf3-e7e0-47b6-8b34-4844bae59458
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Date deposited: 15 Jun 2018 16:31
Last modified: 06 Jun 2024 04:15
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Contributors
Author:
Jasmien Lismont
Author:
Sudha Ram
Author:
Jan Vanthienen
Author:
Wilfried Lemahieu
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