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A Scalable and Efficient Signal Integration System for Job Matching

A Scalable and Efficient Signal Integration System for Job Matching

来源:Arxiv_logoArxiv
英文摘要

LinkedIn, one of the world's largest platforms for professional networking and job seeking, encounters various modeling challenges in building recommendation systems for its job matching product, including cold-start, filter bubbles, and biases affecting candidate-job matching. To address these, we developed the STAR (Signal Integration for Talent And Recruiters) system, leveraging the combined strengths of Large Language Models (LLMs) and Graph Neural Networks (GNNs). LLMs excel at understanding textual data, such as member profiles and job postings, while GNNs capture intricate relationships and mitigate cold-start issues through network effects. STAR integrates diverse signals by uniting LLM and GNN capabilities with industrial-scale paradigms including adaptive sampling and version management. It provides an end-to-end solution for developing and deploying embeddings in large-scale recommender systems. Our key contributions include a robust methodology for building embeddings in industrial applications, a scalable GNN-LLM integration for high-performing recommendations, and practical insights for real-world model deployment.

Ping Liu、Rajat Arora、Xiao Shi、Benjamin Le、Qianqi Shen、Jianqiang Shen、Chengming Jiang、Nikita Zhiltsov、Priya Bannur、Yidan Zhu、Liming Dong、Haichao Wei、Qi Guo、Luke Simon、Liangjie Hong、Wenjing Zhang

10.1145/3711896.3737185

计算技术、计算机技术

Ping Liu,Rajat Arora,Xiao Shi,Benjamin Le,Qianqi Shen,Jianqiang Shen,Chengming Jiang,Nikita Zhiltsov,Priya Bannur,Yidan Zhu,Liming Dong,Haichao Wei,Qi Guo,Luke Simon,Liangjie Hong,Wenjing Zhang.A Scalable and Efficient Signal Integration System for Job Matching[EB/OL].(2025-07-13)[2025-07-25].https://arxiv.org/abs/2507.09797.点此复制

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