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Main Authors: Fan, Ge, Zhao, Nan, Meng, Kai, Luo, Cong, Fu, Yang, Chu, Huiping, Liu, Jialin, Jiang, Yuning, Zheng, Bo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.26424
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author Fan, Ge
Zhao, Nan
Meng, Kai
Luo, Cong
Fu, Yang
Chu, Huiping
Liu, Jialin
Jiang, Yuning
Zheng, Bo
author_facet Fan, Ge
Zhao, Nan
Meng, Kai
Luo, Cong
Fu, Yang
Chu, Huiping
Liu, Jialin
Jiang, Yuning
Zheng, Bo
contents With the rapid evolution of internet services, recommendation systems have become indispensable. In particular, the blending (re-ranking) stage plays a pivotal role in allocating traffic across diverse business objectives. However, existing approaches often suffer from coupled allocation plans, score inflation, and a lack of interpretability. To address these challenges, we propose Uniboost, a unified traffic allocation framework. Uniboost introduces a posterior value alignment mechanism that calibrates abstract model scores to anchor metrics with explicit business semantics, significantly enhancing interpretability. Furthermore, it employs an independent linear boosting paradigm to decouple complex weighting schemes, enabling precise attribution of each plan's contribution. We validate the effectiveness of Uniboost through online A/B tests and in-depth data analysis, demonstrating three key findings: 1) Reducing the overall weight of weighted scores effectively mitigates unintended business interference, yielding a more efficient micro-level traffic allocation strategy; 2) Post-hoc analyses and aggregated dashboards provide intuitive, macro-level insights that guide the design of the overall traffic allocation mechanism; 3) The proposed "Effective Completion Score" serves as an easily obtainable post-metric that offers a reliable anchor for content recommendation pipelines. Collectively, our experiments show that Uniboost not only improves traffic allocation efficiency and recommendation performance at the micro level but also provides macro-level guidance for system iteration. Thus, this work provides an efficient and controllable traffic regulation solution for large-scale industrial recommendation systems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_26424
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publishDate 2026
record_format arxiv
spellingShingle Uniboost: Global Coordination with Value Alignment for Fair and Efficient Traffic Allocation
Fan, Ge
Zhao, Nan
Meng, Kai
Luo, Cong
Fu, Yang
Chu, Huiping
Liu, Jialin
Jiang, Yuning
Zheng, Bo
Information Retrieval
Artificial Intelligence
Machine Learning
With the rapid evolution of internet services, recommendation systems have become indispensable. In particular, the blending (re-ranking) stage plays a pivotal role in allocating traffic across diverse business objectives. However, existing approaches often suffer from coupled allocation plans, score inflation, and a lack of interpretability. To address these challenges, we propose Uniboost, a unified traffic allocation framework. Uniboost introduces a posterior value alignment mechanism that calibrates abstract model scores to anchor metrics with explicit business semantics, significantly enhancing interpretability. Furthermore, it employs an independent linear boosting paradigm to decouple complex weighting schemes, enabling precise attribution of each plan's contribution. We validate the effectiveness of Uniboost through online A/B tests and in-depth data analysis, demonstrating three key findings: 1) Reducing the overall weight of weighted scores effectively mitigates unintended business interference, yielding a more efficient micro-level traffic allocation strategy; 2) Post-hoc analyses and aggregated dashboards provide intuitive, macro-level insights that guide the design of the overall traffic allocation mechanism; 3) The proposed "Effective Completion Score" serves as an easily obtainable post-metric that offers a reliable anchor for content recommendation pipelines. Collectively, our experiments show that Uniboost not only improves traffic allocation efficiency and recommendation performance at the micro level but also provides macro-level guidance for system iteration. Thus, this work provides an efficient and controllable traffic regulation solution for large-scale industrial recommendation systems.
title Uniboost: Global Coordination with Value Alignment for Fair and Efficient Traffic Allocation
topic Information Retrieval
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2605.26424