Author:
Tezuka Hiroyuki,Uno Shumpei,Yamamoto Naoki
Abstract
AbstractGenerative modeling is an unsupervised machine learning framework, that exhibits strong performance in various machine learning tasks. Recently, we find several quantum versions of generative model, some of which are even proven to have quantum advantage. However, those methods are not directly applicable to construct a generative model for learning a set of quantum states, i.e., ensemble. In this paper, we propose a quantum generative model that can learn quantum ensemble, in an unsupervised machine learning framework. The key idea is to introduce a new loss function calculated based on optimal transport loss, which have been widely used in classical machine learning due to its good properties; e.g., no need to ensure the common support of two ensembles. We then give in-depth analysis on this measure, such as the scaling property of the approximation error. We also demonstrate the generative modeling with the application to quantum anomaly detection problem, that cannot be handled via existing methods. The proposed model paves the way for a wide application such as the health check of quantum devices and efficient initialization of quantum computation.
Funder
JST
MEXT Quantum Leap Flagship Program
Publisher
Springer Science and Business Media LLC
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