Exploring Large Language Model for Graph Data Understanding in Online
Job Recommendations
- URL: http://arxiv.org/abs/2307.05722v3
- Date: Sun, 24 Dec 2023 02:39:09 GMT
- Title: Exploring Large Language Model for Graph Data Understanding in Online
Job Recommendations
- Authors: Likang Wu, Zhaopeng Qiu, Zhi Zheng, Hengshu Zhu, and Enhong Chen
- Abstract summary: We present a novel framework that harnesses the rich contextual information and semantic representations provided by large language models to analyze behavior graphs.
By leveraging this capability, our framework enables personalized and accurate job recommendations for individual users.
- Score: 63.19448893196642
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Large Language Models (LLMs) have revolutionized natural language processing
tasks, demonstrating their exceptional capabilities in various domains.
However, their potential for behavior graph understanding in job
recommendations remains largely unexplored. This paper focuses on unveiling the
capability of large language models in understanding behavior graphs and
leveraging this understanding to enhance recommendations in online recruitment,
including the promotion of out-of-distribution (OOD) application. We present a
novel framework that harnesses the rich contextual information and semantic
representations provided by large language models to analyze behavior graphs
and uncover underlying patterns and relationships. Specifically, we propose a
meta-path prompt constructor that leverages LLM recommender to understand
behavior graphs for the first time and design a corresponding path augmentation
module to alleviate the prompt bias introduced by path-based sequence input. By
leveraging this capability, our framework enables personalized and accurate job
recommendations for individual users. We evaluate the effectiveness of our
approach on a comprehensive dataset and demonstrate its ability to improve the
relevance and quality of recommended quality. This research not only sheds
light on the untapped potential of large language models but also provides
valuable insights for developing advanced recommendation systems in the
recruitment market. The findings contribute to the growing field of natural
language processing and offer practical implications for enhancing job search
experiences. We release the code at https://github.com/WLiK/GLRec.
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