Learning from Positive-Unlabeled Data In Recommender Systems and Bioinformatics: A Brief Survey
The Hong Kong University of Science and Technology (Guangzhou)
Data Science and Analytics Thrust
PhD Thesis Proposal Examination
By Ms. Kexin SHI
Abstract
Positive-Unlabeled (PU) learning, a semi-supervised learning framework, has gained significant attention due to its potential to handle situations where negative examples are costly, difficult to obtain, or unavailable. In this survey, we first present the fundamental theories and methodologies of PU learning. The core of the discussion, however, lies in application of PU learning in two real-world scenarios, i.e. recommender systems and bioinformatics.
The primary focus is given to two-step methods, with an emphasis on negative sampling in two-step framework as applied to recommender systems and bioinformatics. Each realistic scenario is explored separately, addressing their unique data structures, the aptness of PU learning in these field, and the potential challenges for future research directions.
Committee Members
Prof. Xiaowen CHU(chair)
Dr. Wenjia WANG
Dr. Xinzhou GUO
Dr. Lei LI
Date
03 July 2023
Time
14:30:00 - 16:00:00
Location
E1-2F-202, HKUST(GZ)
Join Link
Zoom Meeting ID: 886 4374 6102
Passcode: 030723
dsarpg@hkust-gz.edu.cn