典型文献
Universal adversarial examples and perturbations for quantum classifiers
文献摘要:
Quantum machine learning explores the interplay between machine learning and quantum physics,which may lead to unprecedented perspectives for both fields.In fact,recent works have shown strong evidence that quantum computers could outperform classical computers in solving certain notable machine learning tasks.Yet,quantum learning systems may also suffer from the vulnerability problem:adding a tiny carefully crafted perturbation to the legitimate input data would cause the systems to make incorrect predictions at a notably high confidence level.In this paper,we study the universality of adversarial examples and perturbations for quantum classifiers.Through concrete examples involving classifications of real-life images and quantum phases of matter,we show that there exist universal adversarial examples that can fool a set of different quantum classifiers.We prove that,for a set of k classifiers with each receiving input data of n qubits,an O(ln[k]/2")increase of the perturbation strength is enough to ensure a moderate universal adversarial risk.In addition,for a given quantum classifier,we show that there exist universal adversarial perturbations,which can be added to different legitimate samples to make them adversarial examples for the classifier.Our results reveal the universality perspective of adversarial attacks for quantum machine learning systems,which would be crucial for practical applications of both near-term and future quantum technologies in solving machine learning problems.
文献关键词:
中图分类号:
作者姓名:
Weiyuan Gong;Dong-Ling Deng
作者机构:
Center for Quantum Information,Institute for Interdisciplinary Information Sciences(ⅢS),Tsinghua University,Beijing 100084,China;ShanghaiQi Zhi Institute,Shanghai 200232,China
文献出处:
引用格式:
[1]Weiyuan Gong;Dong-Ling Deng-.Universal adversarial examples and perturbations for quantum classifiers)[J].国家科学评论(英文版),2022(06):43-50
A类:
B类:
Universal,adversarial,examples,perturbations,quantum,classifiers,Quantum,machine,learning,explores,interplay,between,physics,which,may,lead,unprecedented,perspectives,both,fields,In,fact,recent,works,have,shown,strong,evidence,that,computers,could,outperform,classical,solving,certain,notable,tasks,Yet,systems,also,suffer,from,vulnerability,adding,tiny,carefully,crafted,legitimate,input,data,would,cause,make,incorrect,predictions,notably,high,confidence,level,this,paper,study,universality,Through,concrete,involving,classifications,real,life,images,phases,matter,there,exist,can,fool,set,different,We,prove,each,receiving,qubits,increase,strength,enough,ensure,moderate,risk,addition,given,added,samples,them,Our,results,reveal,attacks,crucial,practical,applications,near,term,future,technologies,problems
AB值:
0.535259
相似文献
机标中图分类号,由域田数据科技根据网络公开资料自动分析生成,仅供学习研究参考。