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About
President
Governance
Partner Institutions
Visit
People
Management
Faculty
Postdocs
Visiting Scholars
Staff
Research
Research Groups
Courses
Seminars
Join Us
Faculty
Postdocs
Students
Events
Conferences
Workshops
Forum
Life @ BIMSA
Accommodation
Transportation
Facilities
Tour
News
News
Announcement
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Qiuzhen College, Tsinghua University
Yau Mathematical Sciences Center, Tsinghua University (YMSC)
Tsinghua Sanya International  Mathematics Forum (TSIMF)
Shanghai Institute for Mathematics and  Interdisciplinary Sciences (SIMIS)
BIMSA > YMSC-BIMSA Quantum Information Seminar Anchoring Variational Quantum Algorithms via Statistical Learning Theory
Anchoring Variational Quantum Algorithms via Statistical Learning Theory
Organizer
Zheng Wei Liu
Speaker
Yuxuan Du
Time
Friday, April 15, 2022 11:00 AM - 12:00 PM
Venue
JCY-1
Online
Zoom 388 528 9728 (BIMSA)
Abstract
Near-term quantum machines provide a novel way to explore many scientfic domains beyond the reach of classical machines. Meanwhile, near-term quantum machines are fragile, where the available quantum resources are limited and error-prone. Variational quantum algorithms (VQAs) are leading candidates to alleviate these defects. Experimental studies have demonstrated the potential of VQAs in a plethora of areas including machine learning, fundamental science, and quantum chemisty. Neverthess, theoretical understanding of VQAs remains largely unknown. To address this issue, in this talk, we investigate the expressivity of VQAs through the lens of statistical learning theory. According to the entangled relation between expressivity and model power, we further utilize the achieved results to analyze the generalization ability of a wide class of quantum discriminative and generative learning models and discuss potential advantages.
Speaker Intro
Yuxuan Du is currently a Senior Researcher at JD Explore Academy, and also a member of Doctor Management Trainee at JD. com. Prior to that, he received a Ph.D. degree in computer science from The University of Sydney and a Bachelor of Physics (elite class) from Sichuan University. His research interests include fundamental algorithms for quantum machine learning, quantum learning theory, and quantum computing. He has published his research outcomes in many top-tier journals and conferences in physics and computer science including Physical Review Letters, Physical Review X Quantum, npj Quantum Information, Transactions on Information Theory, Conference on Computer Vision and Pattern Recognition, etc.
Beijing Institute of Mathematical Sciences and Applications
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