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Erschienen in: Annals of Data Science 4/2016

12.10.2016

Targeted Marketing Using Balance Optimization Subset Selection

verfasst von: Shouvik Dutta, Jason Sauppe, Sheldon Jacobson

Erschienen in: Annals of Data Science | Ausgabe 4/2016

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Abstract

Customers today are faced with a plethora of choices of products to buy and consume. The sheer volume of choices can be daunting, and customers forced to sift through the products are likely to become dissatisfied. Retailers have the ability to solve this problem by providing customers with recommendations of products that are likely to be of interest to each specific customer. This can be done by profiling each customer and identifying products that similar customers like. This paper presents a balance optimization approach, where customers are characterized and matched as groups. By identifying and analyzing a group of customers who have shown positive reactions to a specific product, we propose a technique to find a comparable group who we hypothesize will show a similar positive reaction. This allows for the creation of targeted advertisements, mailing lists, and other material to recommend products to customers. The methodology is tested using a Netflix dataset, where we are able to show a statistically significant improvement on the mean rating of selected users over random selection of 0.384 when the ratings are on a scale of 0–5.

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Metadaten
Titel
Targeted Marketing Using Balance Optimization Subset Selection
verfasst von
Shouvik Dutta
Jason Sauppe
Sheldon Jacobson
Publikationsdatum
12.10.2016
Verlag
Springer Berlin Heidelberg
Erschienen in
Annals of Data Science / Ausgabe 4/2016
Print ISSN: 2198-5804
Elektronische ISSN: 2198-5812
DOI
https://doi.org/10.1007/s40745-016-0090-z

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