SoK: quantum computing methods for machine learning optimization

被引:0
|
作者
Baniata, Hamza [1 ]
机构
[1] Univ Szeged, Dept Software Engn, Szeged, Hungary
关键词
Hyperparameter optimization; Neural architecture search; Quantum architecture search; Machine learning; Quantum computing; SEARCH;
D O I
10.1007/s42484-024-00180-1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Hyperparameter optimization (HPO) and neural architecture search (NAS) of machine learning (ML) models are in the core implementation steps of AI-enabled systems. With multi-objective and multi-level optimization of complex ML models, it is agreed-on that HPO and NAS are NP-hard problems. That is, the size of the search space grows exponentially with the number of hyperparameters, possible architecture elements, and configurations. In 2017, the first proposal of QC-enabled HPO and NAS optimization was proposed. Simultaneously, advancements related to quantum neural networks (QNNs) resulted in more powerful ML due to their deployment on QC infrastructure. For such, quantum architecture search (QAS) problem arose as a similar problem, aiming to achieve optimal configuration of quantum circuits. Although classical approaches to solve these problems were thoroughly studied in the literature, a systematic overview that summarizes quantum-based methods is still missing. Our work addresses this gap and provides the first Systemization of Knowledge (SoK) to differentiate, and bridge the gap between the utilization of QC for optimizing ML rather than learning. Specifically, we provide qualitative and empirical analysis of related works, and we classify the properties of QC-based HPO, NAS, and QAS optimization systems. Additionally, we present a taxonomy of studied works, and identify four main types of quantum methods used to address the aforementioned problems. Finally, we set the agenda for this new field by identifying promising directions and open issues for future research.
引用
收藏
页数:26
相关论文
共 50 条
  • [41] Quantum Computing and Deep Learning Methods for GDP Growth Forecasting
    Alaminos, David
    Salas, M. Belen
    Fernandez-Gamez, Manuel A.
    [J]. COMPUTATIONAL ECONOMICS, 2022, 59 (02) : 803 - 829
  • [42] Quantum Computing and Deep Learning Methods for GDP Growth Forecasting
    David Alaminos
    M. Belén Salas
    Manuel A. Fernández-Gámez
    [J]. Computational Economics, 2022, 59 : 803 - 829
  • [43] Machine learning methods to assist energy system optimization
    A.T.D.Perera
    P.U.Wickramasinghe
    Vahid M.Nik
    Jean-Louis Scartezzini
    侯恩哲
    [J]. 建筑节能(中英文), 2019, 47 (06) : 87 - 87
  • [44] ADVANTAGES OF MACHINE LEARNING METHODS IN AERODYNAMIC BLADE OPTIMIZATION
    Beqiraj, Klajdi
    Perrone, Andrea
    Sanguineti, Marco
    Ricci, Gianluca
    [J]. PROCEEDINGS OF ASME TURBO EXPO 2023: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, GT2023, VOL 13D, 2023,
  • [45] Sample size selection in optimization methods for machine learning
    Byrd, Richard H.
    Chin, Gillian M.
    Nocedal, Jorge
    Wu, Yuchen
    [J]. MATHEMATICAL PROGRAMMING, 2012, 134 (01) : 127 - 155
  • [46] Machine learning methods to assist energy system optimization
    Perera, A. T. D.
    Wickramasinghe, P. U.
    Nik, Vahid M.
    Scartezzini, Jean-Louis
    [J]. APPLIED ENERGY, 2019, 243 : 191 - 205
  • [47] Sample size selection in optimization methods for machine learning
    Richard H. Byrd
    Gillian M. Chin
    Jorge Nocedal
    Yuchen Wu
    [J]. Mathematical Programming, 2012, 134 : 127 - 155
  • [48] A Survey of Optimization Methods From a Machine Learning Perspective
    Sun, Shiliang
    Cao, Zehui
    Zhu, Han
    Zhao, Jing
    [J]. IEEE TRANSACTIONS ON CYBERNETICS, 2020, 50 (08) : 3668 - 3681
  • [49] Optimization Methods for Large-Scale Machine Learning
    Bottou, Leon
    Curtis, Frank E.
    Nocedal, Jorge
    [J]. SIAM REVIEW, 2018, 60 (02) : 223 - 311
  • [50] A Review of Machine Learning Methods in Turbine Cooling Optimization
    Xu, Liang
    Jin, Shenglong
    Ye, Weiqi
    Li, Yunlong
    Gao, Jianmin
    [J]. ENERGIES, 2024, 17 (13)