Potential and limitations of quantum extreme learning machines

被引:14
|
作者
Innocenti, L. [1 ]
Lorenzo, S. [1 ]
Palmisano, I. [2 ]
Ferraro, A. [2 ,3 ]
Paternostro, M. [2 ]
Palma, G. M. [1 ,4 ]
机构
[1] Univ Palermo, Dipartimento Fis & Chim Emilio Segre, Via Archirafi 36, I-90123 Palermo, Italy
[2] Queens Univ Belfast, Ctr Theoret Atom Mol & Opt Phys, Sch Math & Phys, Belfast BT7 1NN, North Ireland
[3] Univ Milan, Dipartimento Fis Aldo Pontremoli, Quantum Technol Lab, I-20133 Milan, Italy
[4] CNR, Ist Nanosci, NEST, Piazza S Silvestro 12, I-56127 Pisa, Italy
基金
英国工程与自然科学研究理事会;
关键词
D O I
10.1038/s42005-023-01233-w
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Quantum machine learning studies the application of concepts and techniques originating in machine learning to quantum devices. In this paper, the authors develop a framework to model quantum extreme learning machines, showing that they can be concisely described via single effective measurements, and provide an explicit characterization of the information that can be exactly retrieved using such protocols. Quantum extreme learning machines (QELMs) aim to efficiently post-process the outcome of fixed - generally uncalibrated - quantum devices to solve tasks such as the estimation of the properties of quantum states. The characterisation of their potential and limitations, which is currently lacking, will enable the full deployment of such approaches to problems of system identification, device performance optimization, and state or process reconstruction. We present a framework to model QELMs, showing that they can be concisely described via single effective measurements, and provide an explicit characterisation of the information exactly retrievable with such protocols. We furthermore find a close analogy between the training process of QELMs and that of reconstructing the effective measurement characterising the given device. Our analysis paves the way to a more thorough understanding of the capabilities and limitations of QELMs, and has the potential to become a powerful measurement paradigm for quantum state estimation that is more resilient to noise and imperfections.
引用
收藏
页数:9
相关论文
共 50 条
  • [41] Object tracking with collaborative extreme learning machines
    Haipeng Kuang
    Liang Xun
    Multimedia Tools and Applications, 2020, 79 : 4965 - 4988
  • [42] Learning to Stabilize Extreme Neural Machines with Metaplasticity
    Boucher-Routhier, Megan
    Pilzak, Artem
    Charbonneau, Annie Theberge
    Thivierge, Jean-Philippe
    2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2022,
  • [43] Neuromemristive Extreme Learning Machines for Pattern Classification
    Merkel, Cory
    Kudithipudi, Dhireesha
    2014 IEEE COMPUTER SOCIETY ANNUAL SYMPOSIUM ON VLSI (ISVLSI), 2014, : 77 - 82
  • [44] DISULFIDE CONNECTIVITY PREDICTION WITH EXTREME LEARNING MACHINES
    Alhamdoosh, Monther
    Savojardo, Castrense
    Fariselli, Piero
    Casadio, Rita
    BIOINFORMATICS 2011, 2011, : 5 - 14
  • [45] Poster: Backdoor Attack on Extreme Learning Machines
    Tajalli, Behrad
    Abad, Gorka
    Picek, Stjepan
    PROCEEDINGS OF THE 2023 ACM SIGSAC CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, CCS 2023, 2023, : 3588 - 3590
  • [46] Extreme learning machines’ ensemble selection with GRASP
    Ting Zhang
    Qun Dai
    Zhongchen Ma
    Applied Intelligence, 2015, 43 : 439 - 459
  • [47] A Further Investigation on the Reliability of Extreme Learning Machines
    Hu, Yanxing
    Wang, Yuan
    You, Jane Jia
    Liu, Jame N. K.
    He, Yulin
    2014 IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOP (ICDMW), 2014, : 1031 - 1037
  • [48] Extreme Learning Machines as Encoders for Sparse Reconstruction
    Al Mamun, S. M. Abdullah
    Lu, Chen
    Jayaraman, Balaji
    FLUIDS, 2018, 3 (04)
  • [49] Deformable Surface Registration with Extreme Learning Machines
    Gritsenko, Andrey
    Sun, Zhiyu
    Baek, Stephen
    Miche, Yoan
    Hu, Renjie
    Lendasse, Amaury
    PROCEEDINGS OF ELM-2017, 2019, 10 : 304 - 316
  • [50] Extreme Learning Machines for Intrusion Detection Systems
    de Farias, Gilles Paiva M.
    de Oliveira, Adriano L. I.
    Cabral, George G.
    NEURAL INFORMATION PROCESSING, ICONIP 2012, PT IV, 2012, 7666 : 535 - 543