Exploring 360-Degree View of Customers for Lookalike Modeling
SIGIR 2023 Lookalike models are based on the assumption that user similarity plays an important role towards product selling and enhancing the existing advertising campaigns from a very large user base. Challenges associated to these models reside on the heterogeneity of the user base and its sparsi...
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Zusammenfassung: | SIGIR 2023 Lookalike models are based on the assumption that user similarity plays an
important role towards product selling and enhancing the existing advertising
campaigns from a very large user base. Challenges associated to these models
reside on the heterogeneity of the user base and its sparsity. In this work, we
propose a novel framework that unifies the customers different behaviors or
features such as demographics, buying behaviors on different platforms,
customer loyalty behaviors and build a lookalike model to improve customer
targeting for Rakuten Group, Inc. Extensive experiments on real e-commerce and
travel datasets demonstrate the effectiveness of our proposed lookalike model
for user targeting task. |
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DOI: | 10.48550/arxiv.2304.09105 |