Revenue optimization and customer targeting in daily-deals sites

=== Daily-deals sites (DDSs), such as Groupon and Peixe Urbano, attract millions of customers in the hunt for offers at significantly reduced prices. The challenge of DDSs is to find the best match between deals and customers while generating as much revenue as possible. One important objective of...

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Main Author: Anisio Mendes Lacerda
Other Authors: Nivio Ziviani
Format: Others
Language:Portuguese
Published: Universidade Federal de Minas Gerais 2013
Online Access:http://hdl.handle.net/1843/ESBF-9GMN7J
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spelling ndltd-IBICT-oai-bibliotecadigital.ufmg.br-MTD2BR-ESBF-9GMN7J2019-01-21T18:05:16Z Revenue optimization and customer targeting in daily-deals sites Anisio Mendes Lacerda Nivio Ziviani Adriano Alonso Veloso Adriano Alonso Veloso Berthier Ribeiro de Araujo Neto Leandro Balby Marinho Ricardo Baeza-yates Wagner Meira Junior Daily-deals sites (DDSs), such as Groupon and Peixe Urbano, attract millions of customers in the hunt for offers at significantly reduced prices. The challenge of DDSs is to find the best match between deals and customers while generating as much revenue as possible. One important objective of a DDS is to improve the aggregated value customers give to emails, which should not be seen as spam. This thesis solves three different problems in order to guarantee revenue maximization and customer satisfaction. First, a method for predicting the number of coupons a deal is going to sell is proposed. Second, we present an email prioritization approach. Third, we introduce a new strategy for deals recommendation via email. All three methods improved the results of state-of-the-art algorithms for the tasks being addressed, with gains in precision varying from 7% to 21%, while reducing the number of emails sent in 40% without affecting the number of customers clicking the deals in emails. Daily-deals sites (DDSs), such as Groupon and Peixe Urbano, attract millions of customers in the hunt for offers at significantly reduced prices. The challenge of DDSs is to find the best match between deals and customers while generating as much revenue as possible. One important objective of a DDS is to improve the aggregated value customers give to emails, which should not be seen as spam. This thesis solves three different problems in order to guarantee revenue maximization and customer satisfaction. First, a method for predicting the number of coupons a deal is going to sell is proposed. Second, we present an email prioritization approach. Third, we introduce a new strategy for deals recommendation via email. All three methods improved the results of state-of-the-art algorithms for the tasks being addressed, with gains in precision varying from 7% to 21%, while reducing the number of emails sent in 40% without affecting the number of customers clicking the deals in emails. 2013-12-20 info:eu-repo/semantics/publishedVersion info:eu-repo/semantics/doctoralThesis http://hdl.handle.net/1843/ESBF-9GMN7J por info:eu-repo/semantics/openAccess text/html Universidade Federal de Minas Gerais 32001010004P6 - CIÊNCIA DA COMPUTAÇÃO UFMG BR reponame:Biblioteca Digital de Teses e Dissertações da UFMG instname:Universidade Federal de Minas Gerais instacron:UFMG
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description === Daily-deals sites (DDSs), such as Groupon and Peixe Urbano, attract millions of customers in the hunt for offers at significantly reduced prices. The challenge of DDSs is to find the best match between deals and customers while generating as much revenue as possible. One important objective of a DDS is to improve the aggregated value customers give to emails, which should not be seen as spam. This thesis solves three different problems in order to guarantee revenue maximization and customer satisfaction. First, a method for predicting the number of coupons a deal is going to sell is proposed. Second, we present an email prioritization approach. Third, we introduce a new strategy for deals recommendation via email. All three methods improved the results of state-of-the-art algorithms for the tasks being addressed, with gains in precision varying from 7% to 21%, while reducing the number of emails sent in 40% without affecting the number of customers clicking the deals in emails. === Daily-deals sites (DDSs), such as Groupon and Peixe Urbano, attract millions of customers in the hunt for offers at significantly reduced prices. The challenge of DDSs is to find the best match between deals and customers while generating as much revenue as possible. One important objective of a DDS is to improve the aggregated value customers give to emails, which should not be seen as spam. This thesis solves three different problems in order to guarantee revenue maximization and customer satisfaction. First, a method for predicting the number of coupons a deal is going to sell is proposed. Second, we present an email prioritization approach. Third, we introduce a new strategy for deals recommendation via email. All three methods improved the results of state-of-the-art algorithms for the tasks being addressed, with gains in precision varying from 7% to 21%, while reducing the number of emails sent in 40% without affecting the number of customers clicking the deals in emails.
author2 Nivio Ziviani
author_facet Nivio Ziviani
Anisio Mendes Lacerda
author Anisio Mendes Lacerda
spellingShingle Anisio Mendes Lacerda
Revenue optimization and customer targeting in daily-deals sites
author_sort Anisio Mendes Lacerda
title Revenue optimization and customer targeting in daily-deals sites
title_short Revenue optimization and customer targeting in daily-deals sites
title_full Revenue optimization and customer targeting in daily-deals sites
title_fullStr Revenue optimization and customer targeting in daily-deals sites
title_full_unstemmed Revenue optimization and customer targeting in daily-deals sites
title_sort revenue optimization and customer targeting in daily-deals sites
publisher Universidade Federal de Minas Gerais
publishDate 2013
url http://hdl.handle.net/1843/ESBF-9GMN7J
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