Time-series quantum reservoir computing with weak and projective measurements

被引:18
|
作者
Mujal, Pere [1 ]
Martinez-Pena, Rodrigo [1 ]
Giorgi, Gian Luca [1 ]
Soriano, Miguel C. C. [1 ]
Zambrini, Roberta [1 ]
机构
[1] UIB Campus, Inst Fis Interdisciplinaria & Sistemes Complexos U, IFISC, E-07122 Palma De Mallorca, Spain
关键词
TRAJECTORIES; NETWORKS; JUMPS;
D O I
10.1038/s41534-023-00682-z
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Time-series processing is a major challenge in machine learning with enormous progress in the last years in tasks such as speech recognition and chaotic series prediction. A promising avenue for sequential data analysis is quantum machine learning, with computational models like quantum neural networks and reservoir computing. An open question is how to efficiently include quantum measurement in realistic protocols while retaining the needed processing memory and preserving the quantum advantage offered by large Hilbert spaces. In this work, we propose different measurement protocols and assess their efficiency in terms of resources, through theoretical predictions and numerical analysis. We show that it is possible to exploit the quantumness of the reservoir and to obtain ideal performance both for memory and forecasting tasks with two successful measurement protocols. One repeats part of the experiment after each projective measurement while the other employs weak measurements operating online at the trade-off where information can be extracted accurately and without hindering the needed memory, in spite of back-action effects. Our work establishes the conditions for efficient time-series processing paving the way to its implementation in different quantum technologies.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Reservoir Computing Approaches for Representation and Classification of Multivariate Time Series
    Bianchi, Filippo Maria
    Scardapane, Simone
    Lokse, Sigurd
    Jenssen, Robert
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2021, 32 (05) : 2169 - 2179
  • [42] A Novel Approach to Time Series Complexity via Reservoir Computing
    Thorne, Braden
    Jungling, Thomas
    Small, Michael
    Correa, Debora
    Zaitouny, Ayham
    AI 2022: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2022, 13728 : 442 - 455
  • [43] Echo state networks with double-reservoir for time-series prediction
    Liu, Chong
    Zhang, Huaguang
    Yao, Xianshuang
    Zhang, Kun
    2016 SEVENTH INTERNATIONAL CONFERENCE ON INTELLIGENT CONTROL AND INFORMATION PROCESSING (ICICIP), 2016, : 196 - 202
  • [44] Optimizing a quantum reservoir computer for time series prediction
    Kutvonen, Aki
    Fujii, Keisuke
    Sagawa, Takahiro
    SCIENTIFIC REPORTS, 2020, 10 (01)
  • [45] Optimizing a quantum reservoir computer for time series prediction
    Aki Kutvonen
    Keisuke Fujii
    Takahiro Sagawa
    Scientific Reports, 10
  • [46] WEAK SIGNAL DETECTION IN UNDERWATER ACOUSTIC BASED ON TIME-SERIES CHARACTERISTIC
    Wu, Haiping
    Zhu, Shijian
    Lou, Jingjun
    Yu, Liyang
    OPTICAL, ELECTRONIC MATERIALS AND APPLICATIONS, PTS 1-2, 2011, 216 : 548 - +
  • [47] The optoelectronic reservoir computing system based on parallel multi-time-delay feedback loops for time-series prediction and optical performance monitoring
    Yuan, Xin
    Jiang, Lin
    Yan, Lianshan
    Li, Songsui
    Zhang, Liyue
    Yi, Anlin
    Pan, Wei
    Luo, Bin
    CHAOS SOLITONS & FRACTALS, 2024, 186
  • [48] Direct observation of temporal coherence by weak projective measurements of photon arrival time
    Hofmann, Holger F.
    Ren, Changliang
    PHYSICAL REVIEW A, 2013, 87 (06):
  • [49] RN-222 TIME-SERIES MEASUREMENTS IN THE ANTARCTIC PENINSULA
    PEREIRA, EB
    CHEMICAL GEOLOGY, 1988, 70 (1-2) : 103 - 103
  • [50] COMPUTING THE COVARIANCE FUNCTION OF A STATIONARY STOCHASTIC TIME-SERIES WITH SPECIFIED ACCURACY
    KACHIASHVILI, KI
    KHUCHUA, VI
    INDUSTRIAL LABORATORY, 1989, 55 (03): : 347 - 350