Discovering Generalized Profile-Association Rules for the Targeted Advertising of New Products

Discovering Generalized Profile-Association Rules for the Targeted Advertising of New Products

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Article ID: iaor200953665
Country: United States
Volume: 20
Issue: 1
Start Page Number: 34
End Page Number: 45
Publication Date: Jan 2008
Journal: INFORMS Journal On Computing
Authors: ,
Keywords: datamining, marketing
Abstract:

We propose a data–mining approach for the targeted marketing of new products that have never been rated or purchased by customers. This approach uncovers associations between customer types and product genres that frequently occurred in previous transaction records. Customer types are defined in terms of demographic attribute values that can be aggregated through concept hierarchies; product types can be generalized through product taxonomies. We use generalized profile–association rules (GP association rules) to identify the advertising targets for a given new product. In addition, we propose two algorithms—GP–Apriori and Merge–prune—to mine GP association rules and develop a value–based targeted advertising algorithm to select prospective customers of a new product on the basis of the discovered rules. We evaluate the proposed approach using both synthetic data and library–circulation data.

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