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Towards a robust modeling of temporal interest change patterns for behavioral targeting

Published: 13 May 2013 Publication History

Abstract

Modern web-scale behavioral targeting platforms leverage historical activity of billions of users to predict user interests and inclinations, and consequently future activities. Future activities of particular interest involve purchases or transactions, and are referred to as conversions. Unlike ad-clicks, conversions directly translate to advertiser's revenue, and thus provide a very concrete metric for return on advertising investment. A typical behavioral targeting system faces two main challenges: the web-scale amounts of user histories to process on a daily basis, and the relative sparsity of conversions (compared to clicks in a traditional setting). These challenges call for generation of effective and efficient user profiles. Most existing works use the historical intensity of a user's interest in various topics to model future interest. In this paper we explore how the change in user behavior can be used to predict future actions and show how it complements the traditional models of decaying interest and action recency to build a complete picture about the user interests and better predict conversions. Our evaluation over a real-world set of campaigns indicates that the combination of change of interest, decaying intensity, and action recency helps in: 1) scoring significant improvements in optimizing for conversions over traditional baselines, 2) substantially improving the targeting efficiency for campaigns with highly sparse conversions, and 3) highly reducing the overall history sizes used in targeting. Furthermore, our techniques have been deployed to production and scored a substantial improvement in targeting performance while imposing a negligible overhead in terms of overall platform running time.

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  • (2021)A Human-in-the-loop Approach to Social Behavioral Targeting2021 IEEE 37th International Conference on Data Engineering (ICDE)10.1109/ICDE51399.2021.00031(277-288)Online publication date: Apr-2021
  • (2018)MoBench: A Software Tool for Measuring Smoothness of Mobile Browsers2018 International Symposium on Computer, Consumer and Control (IS3C)10.1109/IS3C.2018.00014(18-21)Online publication date: Dec-2018
  • (2017)Collaborative dynamic sparse topic regression with user profile evolution for item recommendationProceedings of the Thirty-First AAAI Conference on Artificial Intelligence10.5555/3298239.3298432(1316-1322)Online publication date: 4-Feb-2017
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  1. Towards a robust modeling of temporal interest change patterns for behavioral targeting

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    Published In

    cover image ACM Other conferences
    WWW '13: Proceedings of the 22nd international conference on World Wide Web
    May 2013
    1628 pages
    ISBN:9781450320351
    DOI:10.1145/2488388

    Sponsors

    • NICBR: Nucleo de Informatcao e Coordenacao do Ponto BR
    • CGIBR: Comite Gestor da Internet no Brazil

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    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 13 May 2013

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    Author Tags

    1. behavioral targeting
    2. display advertising
    3. time-based features
    4. user modeling

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    • Research-article

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    WWW '13
    Sponsor:
    • NICBR
    • CGIBR
    WWW '13: 22nd International World Wide Web Conference
    May 13 - 17, 2013
    Rio de Janeiro, Brazil

    Acceptance Rates

    WWW '13 Paper Acceptance Rate 125 of 831 submissions, 15%;
    Overall Acceptance Rate 1,899 of 8,196 submissions, 23%

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    View all
    • (2021)A Human-in-the-loop Approach to Social Behavioral Targeting2021 IEEE 37th International Conference on Data Engineering (ICDE)10.1109/ICDE51399.2021.00031(277-288)Online publication date: Apr-2021
    • (2018)MoBench: A Software Tool for Measuring Smoothness of Mobile Browsers2018 International Symposium on Computer, Consumer and Control (IS3C)10.1109/IS3C.2018.00014(18-21)Online publication date: Dec-2018
    • (2017)Collaborative dynamic sparse topic regression with user profile evolution for item recommendationProceedings of the Thirty-First AAAI Conference on Artificial Intelligence10.5555/3298239.3298432(1316-1322)Online publication date: 4-Feb-2017
    • (2017)Mining and modeling web trajectories from passive traces2017 IEEE International Conference on Big Data (Big Data)10.1109/BigData.2017.8258416(4016-4021)Online publication date: Dec-2017
    • (2015)Modeling users' dynamic preference for personalized recommendationProceedings of the 24th International Conference on Artificial Intelligence10.5555/2832415.2832497(1785-1791)Online publication date: 25-Jul-2015
    • (2015)Understanding computer usage evolution2015 IEEE 31st International Conference on Data Engineering10.1109/ICDE.2015.7113424(1549-1560)Online publication date: Apr-2015
    • (2014)Towards a dynamic top-N recommendation frameworkProceedings of the 8th ACM Conference on Recommender systems10.1145/2645710.2645720(217-224)Online publication date: 6-Oct-2014

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