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Image Matters: Visually Modeling User Behaviors Using Advanced Model Server

Published: 17 October 2018 Publication History
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  • Abstract

    In Taobao, the largest e-commerce platform in China, billions of items are provided and typically displayed with their images.For better user experience and business effectiveness, Click Through Rate (CTR) prediction in online advertising system exploits abundant user historical behaviors to identify whether a user is interested in a candidate ad. Enhancing behavior representations with user behavior images will help understand user's visual preference and improve the accuracy of CTR prediction greatly. So we propose to model user preference jointly with user behavior ID features and behavior images. However, training with user behavior images brings tens to hundreds of images in one sample, giving rise to a great challenge in both communication and computation. To handle these challenges, we propose a novel and efficient distributed machine learning paradigm called Advanced Model Server (AMS). With the well-known Parameter Server (PS) framework, each server node handles a separate part of parameters and updates them independently. AMS goes beyond this and is designed to be capable of learning a unified image descriptor model shared by all server nodes which embeds large images into low dimensional high level features before transmitting images to worker nodes. AMS thus dramatically reduces the communication load and enables the arduous joint training process. Based on AMS, the methods of effectively combining the images and ID features are carefully studied, and then we propose a Deep Image CTR Model. Our approach is shown to achieve significant improvements in both online and offline evaluations, and has been deployed in Taobao display advertising system serving the main traffic.

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    Cited By

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    • (2024)It’s Not Always about Wide and Deep Models: Click-Through Rate Prediction with a Customer Behavior-Embedding RepresentationJournal of Theoretical and Applied Electronic Commerce Research10.3390/jtaer1901000819:1(135-151)Online publication date: 12-Jan-2024
    • (2024)Unified Visual Preference Learning for User Intent UnderstandingProceedings of the 17th ACM International Conference on Web Search and Data Mining10.1145/3616855.3635858(816-825)Online publication date: 4-Mar-2024
    • (2024)A New Creative Generation Pipeline for Click-Through Rate with Stable Diffusion ModelCompanion Proceedings of the ACM on Web Conference 202410.1145/3589335.3648315(180-189)Online publication date: 13-May-2024
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    1. Image Matters: Visually Modeling User Behaviors Using Advanced Model Server

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        cover image ACM Conferences
        CIKM '18: Proceedings of the 27th ACM International Conference on Information and Knowledge Management
        October 2018
        2362 pages
        ISBN:9781450360142
        DOI:10.1145/3269206
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        Published: 17 October 2018

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        Author Tags

        1. computer vision
        2. online advertising
        3. user modeling

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        CIKM '18 Paper Acceptance Rate 147 of 826 submissions, 18%;
        Overall Acceptance Rate 1,861 of 8,427 submissions, 22%

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        View all
        • (2024)It’s Not Always about Wide and Deep Models: Click-Through Rate Prediction with a Customer Behavior-Embedding RepresentationJournal of Theoretical and Applied Electronic Commerce Research10.3390/jtaer1901000819:1(135-151)Online publication date: 12-Jan-2024
        • (2024)Unified Visual Preference Learning for User Intent UnderstandingProceedings of the 17th ACM International Conference on Web Search and Data Mining10.1145/3616855.3635858(816-825)Online publication date: 4-Mar-2024
        • (2024)A New Creative Generation Pipeline for Click-Through Rate with Stable Diffusion ModelCompanion Proceedings of the ACM on Web Conference 202410.1145/3589335.3648315(180-189)Online publication date: 13-May-2024
        • (2023)Multi-modal recommendation algorithm fusing visual and textual featuresPLOS ONE10.1371/journal.pone.028792718:6(e0287927)Online publication date: 29-Jun-2023
        • (2023)Multi-modal Recommendation based on Knowledge Graph2023 9th International Conference on Computer and Communications (ICCC)10.1109/ICCC59590.2023.10507494(2383-2388)Online publication date: 8-Dec-2023
        • (2023)Interaction-Assisted Multi-Modal Representation Learning for RecommendationICASSP 2023 - 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)10.1109/ICASSP49357.2023.10095080(1-5)Online publication date: 4-Jun-2023
        • (2022)Joint Optimization of Ad Ranking and Creative SelectionProceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3477495.3531855(2341-2346)Online publication date: 6-Jul-2022
        • (2022)Hybrid CNN Based Attention with Category Prior for User Image Behavior ModelingProceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3477495.3531854(2336-2340)Online publication date: 6-Jul-2022
        • (2022)Boost CTR Prediction for New Advertisements via Modeling Visual Content2022 IEEE International Conference on Big Data (Big Data)10.1109/BigData55660.2022.10020786(2140-2149)Online publication date: 17-Dec-2022
        • (2021)CMBF: Cross-Modal-Based Fusion Recommendation AlgorithmSensors10.3390/s2116527521:16(5275)Online publication date: 4-Aug-2021
        • Show More Cited By

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