Ye-Hua Liu
Institute for Theoretical Physics, ETH Zurich, Zurich, Switzerland
地点:唐仲英楼B305
时间:2017-04-06 14:30
Classifying phases of matter is key to our understanding of many problems in physics. For quantum-mechanical systems in particular, the task can be daunting due to the exponentially large Hilbert space. With modern computing power and access to ever-larger data sets, classification problems are now routinely solved using machine-learning techniques. Here, we propose a neural-network approach to find phase transitions, based on the performance of a neural network after it is trained with data that are deliberately labelled incorrectly. We demonstrate the success of this method on the topological phase transition in the Kitaev chain, thermal phase transition in the classical Ising model, and the many-body-localization transition in a disordered quantum spin chain. Our method does not depend on order parameters, knowledge of the topological content of the phases, or any other specifics of the transition at hand. It therefore paves the way to the development of a generic tool for identifying unexplored phase transitions.
Education:September 2009 - June 2014, Ph.D., advisor: Prof. You-Quan LiDepartment of Physics, Zhejiang University, Hangzhou, ChinaSeptember 2005 - June 2009, B.Sc.Department of Physics, Zhejiang University, Hangzhou, ChinaExperience:September 2014 - present, postdoc, advisor: Prof. T. M. RiceInstitute for Theoretical Physics, ETH Zurich, Zurich, Switzerland