IoT Thrust Seminar | Online Allocation with Multi-Class Arrivals

2:00pm - 3:00pm
OFFLINE ONLY: W4-202

Supporting the below United Nations Sustainable Development Goals:支持以下聯合國可持續發展目標:支持以下联合国可持续发展目标:

In this talk, we introduce and discuss a multi-class online resource allocation problem with group fairness guarantees. The problem involves allocating a fixed amount of resources to a sequence of agents, each belonging to a specific group. The primary objective is to ensure fairness across different groups in an online setting. We focus on three fairness notions: one based on quantity and two based on utility. To achieve fair allocations, we develop two threshold-based online algorithms, proving their optimality under two fairness notions and near-optimality for the more challenging one. Additionally, we demonstrate a fundamental trade-off between group fairness and individual welfare using a novel representative function-based approach. To address this trade-off, we propose a set-aside multi-threshold algorithm that reserves a portion of the resource to ensure fairness across groups while utilizing the remaining resource to optimize efficiency under utility-based fairness notions. This algorithm is proven to achieve the Pareto-optimal trade-off. We also demonstrate that our problem can model a wide range of real-world applications, including network caching and cloud computing, and empirically evaluate our proposed algorithms in the network caching problem using real datasets.

讲者/ 表演者:
Dr. Xiaoqi Tan
University of Alberta

Dr. Xiaoqi Tan is an Assistant Professor in the Department of Computing Science at the University of Alberta and a Fellow of the Alberta Machine Intelligence Institute (Amii), one of Canada’s three national AI institutes. Prior to joining the University of Alberta in July 2021, he was a Postdoctoral Fellow at the University of Toronto. He received his Ph.D. from the Hong Kong University of Science and Technology (HKUST) in 2018 and was also a visiting research fellow at the School of Engineering and Applied Sciences at Harvard University during his doctoral studies.  Dr. Tan’s research focuses on algorithms and decision-making under uncertainty, especially online algorithms, economic aspects of algorithms, and their role in systems and networks shaped by dynamics and strategic behavior.  He leads the System-driven Optimization & Decision Algorithms Lab (SODALab) at the University of Alberta. His research has been supported by NSERC Discovery Grants, NSERC Alliance Grants, Amii (under the Pan-Canadian Artificial Intelligence Strategy), Alberta Innovates, and Alberta’s Major Innovation Fund. He has served on the program committees of leading conferences including ACM SIGMETRICS and WINE.

语言
英文
适合对象
教职员
研究生
本科生
主办单位
Internet of Things Thrust, HKUST(GZ)
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