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Invite colleaguesIntegrating datasets: Segmenting the fashion market using risk aversion
Abstract
A marketing segmentation can often be improved with the addition of variables which are often found on different datasets. Using a classification regression tree (CRT) methodology with predictor variables shared across datasets, the terminal node identification equations can be used to estimate the variables on a different dataset. The use of CRT allows the inclusion of categorical variables, such as marital status and ethnicity, as well as continuous variables, such as age and education. Three datasets were integrated and a chi-square automatic interaction detector (CHAID) tree is then used to segment the women's clothing fashion market by demographic and reward and aversion variables. The analysis suggests possible marketing strategies targeting high-spending segments as well as media strategies.
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Author's Biography
Martin Paul Block Professor Emeritus, Integrated Marketing Communications, Northwestern University and Executive Director of the Retail Analytics Council. Martin is co-author of ‘Understanding China's Digital Generation, Media Generations: Media Allocation in a Consumer-Controlled Marketplace’, ‘Retail Communities: Customer Driven Retailing, Analyzing Sales Promotion, Business-to-Business Market Research’ and ‘Cable Advertising: New Ways to New Business’. He has also been published in many academic research journals and trade publications and is the author of several book chapters. His PhD is from Michigan State University.
Citation
Block, Martin Paul (2023, January 1). Integrating datasets: Segmenting the fashion market using risk aversion. In the Applied Marketing Analytics: The Peer-Reviewed Journal, Volume 8, Issue 3. https://doi.org/10.69554/HYSA6653.Publications LLP