Group-Sparse Inductive Matrix Completion through Transfer Learning

主讲人 毛晓军
主持人 高乙今
开始时间 2025年09月24日(周三)13:30
结束时间 2025年09月24日(周三)16:00
地点 松江校区-第2教学楼-320交叉学科数字经济智慧实训室
主办方 国际金融贸易学院
承办方 国际金融贸易学院
语言 汉语
内容提要

The emergence of big data has enabled the creation of significant models by allowing the storage of large data volumes. Transfer learning is a machine learning technique that transfers knowledge between different domains by utilizing pretrained models from the source domain to optimize the target domain. In contrast, inductive matrix completion is a method that leverages side information from multiple sources to improve task performance. This paper explores inductive matrix completion within the transfer learning framework, with our proposed approach assuming group sparsity for the difference between the core matrices of the target and source domains. Theoretical guarantees of our method are investigated to demonstrate the gains achieved through transfer learning compared with standard inductive matrix completion. Several synthetic experiments are conducted to evaluate the performance of the proposed approach and existing methods, demonstrating that our method outperforms others.

人物简介

毛晓军

上海交通大学教授。他的研究领域包括分布式统计推断,推荐系统和高维数据分析。主要研究成果发表于AOS、JASA、JMLR、IEEE(TPAMI, TIT, TSP, TIFS)、ICML、NeurIPS, 《管理世界》等期刊及会议上。先后主持国家自然科学基金优秀青年基金项目、面上项目,入选中国科协青年人才托举工程,上海市东方英才计划青年项目等。

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