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Main Authors: Li, Fan, Meng, Chang, Fu, Jiaqi, Liu, Shuchang, Zhang, Jiashuo, Zhang, Tianke, Wang, Xueliang, Feng, Xiaoqiang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.23459
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author Li, Fan
Meng, Chang
Fu, Jiaqi
Liu, Shuchang
Zhang, Jiashuo
Zhang, Tianke
Wang, Xueliang
Feng, Xiaoqiang
author_facet Li, Fan
Meng, Chang
Fu, Jiaqi
Liu, Shuchang
Zhang, Jiashuo
Zhang, Tianke
Wang, Xueliang
Feng, Xiaoqiang
contents Modern online platforms configure multiple pages to accommodate diverse user needs. This multi-page architecture inherently establishes a two-stage interaction paradigm between the user and the platform: (1) Stage I: page navigation, navigating users to a specific page and (2) Stage II: in-page interaction, where users engage with customized content within the specific page. While the majority of research has been focusing on the sequential recommendation task that improves users' feedback in Stage II, there has been little investigation on how to achieve better page navigation in Stage I. To fill this gap, we formally define the task of Personalized Landing Page Modeling (PLPM) into the field of recommender systems: Given a user upon app entry, the goal of PLPM is to proactively select the most suitable landing page from a set of candidates (e.g., functional tabs, content channels, or aggregation pages) to optimize the short-term PDR metric and the long-term user engagement and satisfaction metrics, while adhering to industrial constraints. Additionally, we propose KLAN (Kuaishou Landing-page Adaptive Navigator), a hierarchical solution framework designed to provide personalized landing pages under the formulation of PLPM. KLAN comprises three key components: (1) KLAN-ISP captures inter-day static page preference; (2) KLAN-IIT captures intra-day dynamic interest transitions and (3) KLAN-AM adaptively integrates both components for optimal navigation decisions. Extensive online experiments conducted on the Kuaishou platform demonstrate the effectiveness of KLAN, obtaining +0.205% and +0.192% improvements on in Daily Active Users (DAU) and user Lifetime (LT). Our KLAN is ultimately deployed on the online platform at full traffic, serving hundreds of millions of users. To promote further research in this important area, we will release our dataset and code upon paper acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2507_23459
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle KLAN: Kuaishou Landing-page Adaptive Navigator
Li, Fan
Meng, Chang
Fu, Jiaqi
Liu, Shuchang
Zhang, Jiashuo
Zhang, Tianke
Wang, Xueliang
Feng, Xiaoqiang
Information Retrieval
Artificial Intelligence
Modern online platforms configure multiple pages to accommodate diverse user needs. This multi-page architecture inherently establishes a two-stage interaction paradigm between the user and the platform: (1) Stage I: page navigation, navigating users to a specific page and (2) Stage II: in-page interaction, where users engage with customized content within the specific page. While the majority of research has been focusing on the sequential recommendation task that improves users' feedback in Stage II, there has been little investigation on how to achieve better page navigation in Stage I. To fill this gap, we formally define the task of Personalized Landing Page Modeling (PLPM) into the field of recommender systems: Given a user upon app entry, the goal of PLPM is to proactively select the most suitable landing page from a set of candidates (e.g., functional tabs, content channels, or aggregation pages) to optimize the short-term PDR metric and the long-term user engagement and satisfaction metrics, while adhering to industrial constraints. Additionally, we propose KLAN (Kuaishou Landing-page Adaptive Navigator), a hierarchical solution framework designed to provide personalized landing pages under the formulation of PLPM. KLAN comprises three key components: (1) KLAN-ISP captures inter-day static page preference; (2) KLAN-IIT captures intra-day dynamic interest transitions and (3) KLAN-AM adaptively integrates both components for optimal navigation decisions. Extensive online experiments conducted on the Kuaishou platform demonstrate the effectiveness of KLAN, obtaining +0.205% and +0.192% improvements on in Daily Active Users (DAU) and user Lifetime (LT). Our KLAN is ultimately deployed on the online platform at full traffic, serving hundreds of millions of users. To promote further research in this important area, we will release our dataset and code upon paper acceptance.
title KLAN: Kuaishou Landing-page Adaptive Navigator
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2507.23459