Proceedings of the 29th ACM International Conference on Information &Amp; Knowledge Management 2020
DOI: 10.1145/3340531.3412744
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Search-based User Interest Modeling with Lifelong Sequential Behavior Data for Click-Through Rate Prediction

Abstract: Rich user behavior data has been proven to be of great value for click-through rate prediction tasks, especially in industrial applications such as recommender systems and online advertising. Both industry and academy have paid much attention to this topic and propose different approaches to modeling with long sequential user behavior data. Among them, memory network based model MIMN[8] proposed by Alibaba, achieves SOTA with the co-design of both learning algorithm and serving system. MIMN is the first indust… Show more

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Cited by 150 publications
(139 citation statements)
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“…Thus, it makes the retrieval process learnable, and it is optimized using REINFORCE algorithm. Search-based Interest Model (SIM) [Qi et al, 2020] is another retrieval based model which proposes hard search and soft search approaches. For the hard search, it uses predefined IDs such as user ID and category ID to build the index.…”
Section: Retrieval Based Modelsmentioning
confidence: 99%
See 1 more Smart Citation
“…Thus, it makes the retrieval process learnable, and it is optimized using REINFORCE algorithm. Search-based Interest Model (SIM) [Qi et al, 2020] is another retrieval based model which proposes hard search and soft search approaches. For the hard search, it uses predefined IDs such as user ID and category ID to build the index.…”
Section: Retrieval Based Modelsmentioning
confidence: 99%
“…The upper layers update less frequently than the lower layers, thus HPMN could capture long-term yet multi-scale temporal patterns. With similar motivations,Pi et al [2019] designed a User Interest Center (UIC) module which decouples the time-consuming user behavior modeling procedure with the real-time prediction process. At the inference time, the user behavioral representation is directly obtained from UIC, which is calculated offline.…”
mentioning
confidence: 99%
“…MIMN [9] embeds user long-term interest into fixed-sized memory network to decrease the burden of the latency and storage of online serving. SIM [10] leverages a general search unit to get a sub user behavior sequence that is relevant to the candidate item and proposes an exact search unit to model the precise relationship between the candidate item and the sub sequence.…”
Section: Related Workmentioning
confidence: 99%
“…Although advertisers play an important role in this ecosystem, much less attention has been paid to understanding advertisers either from academic or industrial communities. Existing studies mainly focus on the user side [2,7,17,27,28,40,41], while some [8] [37] noticed the necessity of advertiser understanding for platforms' long-term development, but they focused on predicting one single task like churn rate. As different advertisers at different business cycles have various demands as well as advertising performance, for example, impressions or clicks of advertised products, ROI (i.e return on investment), expenditure constraints, active or churn rate, etc, it is insufficient to measure overall conditions of advertisers based on one single task.…”
Section: Introductionmentioning
confidence: 99%