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k-Level Truthful Incentivizing Mechanism and Generalized k-MAB Problem | IEEE Journals & Magazine | IEEE Xplore

k-Level Truthful Incentivizing Mechanism and Generalized k-MAB Problem


Abstract:

Multi-armed bandits problem has been widely utilized in economy-related areas. Incentives are explored in the sharing economy to inspire users for better resource allocat...Show More

Abstract:

Multi-armed bandits problem has been widely utilized in economy-related areas. Incentives are explored in the sharing economy to inspire users for better resource allocation. Previous works build a budget-feasible incentive mechanism to learn users’ cost distribution. However, they only consider a special case that all tasks are considered as the same. The general problem asks for finding a solution when the cost for different tasks varies. In this paper, we investigate this problem by considering a system with k levels of difficulty. We present two incentivizing strategies for offline and online implementation, and formally derive the ratio of utility between them in different scenarios. We propose a regret-minimizing mechanism to decide incentives by dynamically adjusting budget assignment and learning from users’ cost distributions. We further extend the problem to a more generalized k-MAB problem by removing the contextual information of difficulties. CUE-UCB algorithm is proposed to address the online advertisement problem for multi-platforms. Our experiment demonstrates utility improvement about 7 times and time saving of 54% to meet a utility objective compared to the previous works in sharing economy, and up to 175% increment of utility for online advertising.
Published in: IEEE Transactions on Computers ( Volume: 71, Issue: 7, 01 July 2022)
Page(s): 1724 - 1739
Date of Publication: 18 August 2021

ISSN Information:

Funding Agency:

Author image of Pengzhan Zhou
Department of Electrical and Computer Engineering, Stony Brook University, Stony Brook, NY, USA
Pengzhan Zhou (Student Member, IEEE) received the BS degree in both applied physics and applied mathematics from Shanghai Jiaotong University, Shanghai, China, the PhD degree in computer and electrical engineering from Stony Brook University, NY, USA. His research interests include machine learning, wireless sensor networks, and performance evaluation of network protocols and algorithms.
Pengzhan Zhou (Student Member, IEEE) received the BS degree in both applied physics and applied mathematics from Shanghai Jiaotong University, Shanghai, China, the PhD degree in computer and electrical engineering from Stony Brook University, NY, USA. His research interests include machine learning, wireless sensor networks, and performance evaluation of network protocols and algorithms.View more
Author image of Xin Wei
Department of Computer Science, Old Dominion University, Norfolk, VA, USA
Xin Wei (Student Member, IEEE) received the bachelor’s degree in economics from Shanghai Jiaotong University, China. She is currently working toward the PhD degree with the Department of Computer Science, Old Dominion University, Norfolk, VA. Her research interest includes machine learning.
Xin Wei (Student Member, IEEE) received the bachelor’s degree in economics from Shanghai Jiaotong University, China. She is currently working toward the PhD degree with the Department of Computer Science, Old Dominion University, Norfolk, VA. Her research interest includes machine learning.View more
Author image of Cong Wang
Department of Cybersecurity, George Mason University, Fairfax, VA, USA
Cong Wang (Member, IEEE) received the BEng degree in information engineering from the Chinese University of Hong Kong in 2008, the MS degree in electrical engineering from Columbia University in 2009, and the PhD in computer and electrical engineering from Stony Brook University, NY, in 2016. He is currently an assistant professor with the Department of Cybersecurity, George Mason University, Fairfax, VA. His research int...Show More
Cong Wang (Member, IEEE) received the BEng degree in information engineering from the Chinese University of Hong Kong in 2008, the MS degree in electrical engineering from Columbia University in 2009, and the PhD in computer and electrical engineering from Stony Brook University, NY, in 2016. He is currently an assistant professor with the Department of Cybersecurity, George Mason University, Fairfax, VA. His research int...View more
Author image of Yuanyuan Yang
Department of Electrical and Computer Engineering, Stony Brook University, Stony Brook, NY, USA
Yuanyuan Yang (Fellow, IEEE) received the BEng and MS degrees in computer science and engineering from Tsinghua University, Beijing, China, and the MSE and PhD degrees in computer science from Johns Hopkins University, Baltimore, Maryland. She is currently a SUNY distinguished professor of computer engineering and computer science with Stony Brook University, New York, and is currently on leave from the National Science F...Show More
Yuanyuan Yang (Fellow, IEEE) received the BEng and MS degrees in computer science and engineering from Tsinghua University, Beijing, China, and the MSE and PhD degrees in computer science from Johns Hopkins University, Baltimore, Maryland. She is currently a SUNY distinguished professor of computer engineering and computer science with Stony Brook University, New York, and is currently on leave from the National Science F...View more

1 Introduction

RECENT trends of applying Reinforcement Learning (RL) mechanisms in economy related areas have shed light on better resolutions to these human-involved fields. Economic problems such as sharing economy, incentivizing mechanisms, online advertising, gambling-like problems are highly complicated due to the dynamic and unpredicted nature of the involving humans. The performance of traditionally heuristic algorithms is diminished in face of the varying cases due to human actions. However, the reinforcement learning can explore and exploit the human factors, which automatically provides ongoing solutions while also converges to the best solutions simultaneously via learning the behaviors of the participants dealt with.

Author image of Pengzhan Zhou
Department of Electrical and Computer Engineering, Stony Brook University, Stony Brook, NY, USA
Pengzhan Zhou (Student Member, IEEE) received the BS degree in both applied physics and applied mathematics from Shanghai Jiaotong University, Shanghai, China, the PhD degree in computer and electrical engineering from Stony Brook University, NY, USA. His research interests include machine learning, wireless sensor networks, and performance evaluation of network protocols and algorithms.
Pengzhan Zhou (Student Member, IEEE) received the BS degree in both applied physics and applied mathematics from Shanghai Jiaotong University, Shanghai, China, the PhD degree in computer and electrical engineering from Stony Brook University, NY, USA. His research interests include machine learning, wireless sensor networks, and performance evaluation of network protocols and algorithms.View more
Author image of Xin Wei
Department of Computer Science, Old Dominion University, Norfolk, VA, USA
Xin Wei (Student Member, IEEE) received the bachelor’s degree in economics from Shanghai Jiaotong University, China. She is currently working toward the PhD degree with the Department of Computer Science, Old Dominion University, Norfolk, VA. Her research interest includes machine learning.
Xin Wei (Student Member, IEEE) received the bachelor’s degree in economics from Shanghai Jiaotong University, China. She is currently working toward the PhD degree with the Department of Computer Science, Old Dominion University, Norfolk, VA. Her research interest includes machine learning.View more
Author image of Cong Wang
Department of Cybersecurity, George Mason University, Fairfax, VA, USA
Cong Wang (Member, IEEE) received the BEng degree in information engineering from the Chinese University of Hong Kong in 2008, the MS degree in electrical engineering from Columbia University in 2009, and the PhD in computer and electrical engineering from Stony Brook University, NY, in 2016. He is currently an assistant professor with the Department of Cybersecurity, George Mason University, Fairfax, VA. His research interests include addressing security and privacy challenges in mobile, cloud computing, IoT, and machine learning and system. He is the recipient of IEEE PERCOM Mark Weiser Best Paper Award in 2018, Commonwealth Cyber Initiative Research and Innovation Award, and NSF CAREER Award in 2021.
Cong Wang (Member, IEEE) received the BEng degree in information engineering from the Chinese University of Hong Kong in 2008, the MS degree in electrical engineering from Columbia University in 2009, and the PhD in computer and electrical engineering from Stony Brook University, NY, in 2016. He is currently an assistant professor with the Department of Cybersecurity, George Mason University, Fairfax, VA. His research interests include addressing security and privacy challenges in mobile, cloud computing, IoT, and machine learning and system. He is the recipient of IEEE PERCOM Mark Weiser Best Paper Award in 2018, Commonwealth Cyber Initiative Research and Innovation Award, and NSF CAREER Award in 2021.View more
Author image of Yuanyuan Yang
Department of Electrical and Computer Engineering, Stony Brook University, Stony Brook, NY, USA
Yuanyuan Yang (Fellow, IEEE) received the BEng and MS degrees in computer science and engineering from Tsinghua University, Beijing, China, and the MSE and PhD degrees in computer science from Johns Hopkins University, Baltimore, Maryland. She is currently a SUNY distinguished professor of computer engineering and computer science with Stony Brook University, New York, and is currently on leave from the National Science Foundation as a program director. She has authored or coauthored more than 400 papers in major journals and refereed conference proceedings and holds seven U.S. patents in the area of her research interests, which include edge computing, data center networks, cloud computing, and wireless networks. She is currently an associate editor-in-chief for the IEEE Transactions on Cloud Computing and an associate editor for the ACM Computing Surveys. She was an associate editor-in-chief and associate editor for the IEEE Transactions on Computers and an associate editor for IEEE Transactions on Parallel and Distributed Systems. She was a general chair, program chair, or vice chair for several major conferences and a program committee member for numerous conferences.
Yuanyuan Yang (Fellow, IEEE) received the BEng and MS degrees in computer science and engineering from Tsinghua University, Beijing, China, and the MSE and PhD degrees in computer science from Johns Hopkins University, Baltimore, Maryland. She is currently a SUNY distinguished professor of computer engineering and computer science with Stony Brook University, New York, and is currently on leave from the National Science Foundation as a program director. She has authored or coauthored more than 400 papers in major journals and refereed conference proceedings and holds seven U.S. patents in the area of her research interests, which include edge computing, data center networks, cloud computing, and wireless networks. She is currently an associate editor-in-chief for the IEEE Transactions on Cloud Computing and an associate editor for the ACM Computing Surveys. She was an associate editor-in-chief and associate editor for the IEEE Transactions on Computers and an associate editor for IEEE Transactions on Parallel and Distributed Systems. She was a general chair, program chair, or vice chair for several major conferences and a program committee member for numerous conferences.View more
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