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Using context to improve the effectiveness of segmentation and targeting in e-commerce

Published: 01 July 2012 Publication History

Abstract

In e-commerce, where competition is tough and customers' preferences can change quickly, it is crucial for companies to segment customers and target marketing actions effectively. The process of segmentation and targeting is effective if the customers grouped into the same segment show the same behavior and reaction to marketing campaigns. However, the link between segmentation and targeting is often missing. Some research contributions have recently addressed this issue, by proposing approaches to build customer behavior models in each segment. However customers' behavior can change with the context, such as in many e-commerce business applications. In these cases, building contextual models of behavior would provide better predictive performance and, in turn, better targeting. However, the problem of including context in a segmentation model and building predictive behavior model of each segment consistently is still an open issue. This research aims at providing an answer to the following research issue: how to include context in a segmentation model in order to build an effective predictive model of customer behavior of each segment. To this aim we identified three different approaches and compared them by a set of experiments across several settings. The first result is that one of the three approaches dominates the others in certain conditions in our experiments. Another important result is that the most accurate approach is not always the most efficient from a managerial perspective.

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Cited By

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  • (2016)Using context for online customer re-identificationExpert Systems with Applications: An International Journal10.1016/j.eswa.2016.08.00464:C(500-511)Online publication date: 1-Dec-2016

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Published In

cover image Expert Systems with Applications: An International Journal
Expert Systems with Applications: An International Journal  Volume 39, Issue 9
July, 2012
920 pages

Publisher

Pergamon Press, Inc.

United States

Publication History

Published: 01 July 2012

Author Tags

  1. Context
  2. Customer behavior models
  3. Segmentation
  4. Targeting

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  • (2016)Using context for online customer re-identificationExpert Systems with Applications: An International Journal10.1016/j.eswa.2016.08.00464:C(500-511)Online publication date: 1-Dec-2016

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