|国家预印本平台
| 注册
首页|SELF: Surrogate-light Feature Selection with Large Language Models in Deep Recommender Systems

SELF: Surrogate-light Feature Selection with Large Language Models in Deep Recommender Systems

SELF: Surrogate-light Feature Selection with Large Language Models in Deep Recommender Systems

来源:Arxiv_logoArxiv
英文摘要

Feature selection is crucial in recommender systems for improving model efficiency and predictive performance. Conventional approaches typically employ surrogate models-such as decision trees or neural networks-to estimate feature importance. However, their effectiveness is inherently constrained, as these models may struggle under suboptimal training conditions, including feature collinearity, high-dimensional sparsity, and insufficient data. In this paper, we propose SELF, an SurrogatE-Light Feature selection method for deep recommender systems. SELF integrates semantic reasoning from Large Language Models (LLMs) with task-specific learning from surrogate models. Specifically, LLMs first produce a semantically informed ranking of feature importance, which is subsequently refined by a surrogate model, effectively integrating general world knowledge with task-specific learning. Comprehensive experiments on three public datasets from real-world recommender platforms validate the effectiveness of SELF.

Xiangyu Zhao、Yichao Wang、Huifeng Guo、Xiaopeng Li、Yuhao Wang、Qidong Liu、Pengyue Jia、Zhaocheng Du、Ruiming Tang

计算技术、计算机技术

Xiangyu Zhao,Yichao Wang,Huifeng Guo,Xiaopeng Li,Yuhao Wang,Qidong Liu,Pengyue Jia,Zhaocheng Du,Ruiming Tang.SELF: Surrogate-light Feature Selection with Large Language Models in Deep Recommender Systems[EB/OL].(2025-08-27)[2025-09-06].https://arxiv.org/abs/2412.08516.点此复制

评论