Exploiting Randomness for Feature Selection in Multinomial Logit: A CRM Cross-Sell Application
نویسندگان
چکیده
1 [email protected], tel: +32 (0)9 264 35 20 (Department of Marketing, Ghent University) 2 [email protected] The authors would like to thank 1) the anonymous home-appliances retailer for providing the data, 2) the Flemish Research Fund (FWO Vlaanderen) for providing the funding for the computing equipment to complete this project (Grantno. G0055.01), 3) Ghent University for funding computer infrastructure (Grantno. 011B5901) and 4) the Faculty of Economics and Business Administration of Ghent University for post-doctoral funding of Anita Prinzie.
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