A Quantum Approach to Pattern Recognition and Machine Learning. Part II

被引:0
|
作者
Dalla Chiara, Maria Luisa [1 ]
Giuntini, Roberto [2 ]
Sergioli, Giuseppe [2 ]
机构
[1] Univ Firenze, Dipartimento Lettere & Filosofia, Via Pergola 60, I-50122 Florence, Italy
[2] Univ Cagliari, Dipartimento Pedag, Psicol, Via Is Mirrionis 1, I-09123 Cagliari, Italy
关键词
Quantum state discrimination; Helstrom-classifiers; Applications;
D O I
10.1007/s10773-024-05567-1
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Different classifier functions can be defined in the framework of a quantum approach to machine learning. While the fidelity-classifier is based on a measure of similarity between quantum states, other classifiers refer to the possibility of an empirical discrimination between different states. An important example is represented by the Helstrom-classifier that has been successfully applied to some empirical simulations, for instance to the study of bio-medical images. An interesting case is represented by the evaluation of clonogenic assays: a technique whose aim is measuring the survival-degree of in vitro-cell cultures, based on the ability of a single cell to grow and to form a colony. In this field a quantum approach allows us to increase the classification-accuracy, in comparison with the corresponding results that are currently obtained in the case of most classical approaches. Some open problems and some possible further developments are mentioned in the conclusion of the article.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Review on Reliable Pattern Recognition with Machine Learning Techniques
    Bhamare, Devyani
    Suryawanshi, Poonam
    FUZZY INFORMATION AND ENGINEERING, 2018, 10 (03) : 362 - 377
  • [32] Machine Learning for Medical Image Processing and Pattern Recognition
    Suzuki, K.
    MEDICAL PHYSICS, 2010, 37 (06) : 3396 - +
  • [33] Fabric Weave Pattern Recognition and Classification by Machine Learning
    Rauf, Muhammad Arslan
    Jehanzeb, Muhammad
    Ullah, Ubaid
    Ali, Usman
    Kashif, Muhammad
    Abdullah, Muhammad
    2022 2ND INTERNATIONAL CONFERENCE OF SMART SYSTEMS AND EMERGING TECHNOLOGIES (SMARTTECH 2022), 2022, : 54 - 59
  • [34] Machine learning and pattern recognition models in change detection
    Bouchaffra, Djamel
    Cheriet, Mohamed
    Jodoin, Pierre-Marc
    Beck, Diane
    PATTERN RECOGNITION, 2015, 48 (03) : 613 - 615
  • [35] Recognition of gasoline in fire debris using machine learning: Part II, application of a neural network
    Bogdal, C.
    Schellenberg, R.
    Lory, M.
    Bovens, M.
    Hopli, O.
    FORENSIC SCIENCE INTERNATIONAL, 2022, 332
  • [36] ON ITERATION RULES WITH MEMORY IN MACHINE LEARNING.
    Csibi, Sandor
    Problems of Control and Information Theory, 1972, 1 (01): : 37 - 50
  • [37] The scaling problem in the pattern recognition approach to machine translation
    Ortiz-Martinez, D.
    Garcia-Varea, I.
    Casacuberta, F.
    PATTERN RECOGNITION LETTERS, 2008, 29 (08) : 1145 - 1153
  • [38] A cognitive approach to language learning.
    Byrnes, H
    MODERN LANGUAGE JOURNAL, 1999, 83 (01): : 140 - 141
  • [39] An IMU-based machine learning approach for daily behavior pattern recognition in dairy cows
    Liang, Hua-Ta
    Hsu, Shu-Wen
    Hsu, Jih-Tay
    Tu, Chia-Jui
    Chang, Yi-Chu
    Jian, Chua Teck
    Lin, Ta-Te
    SMART AGRICULTURAL TECHNOLOGY, 2024, 9
  • [40] Pattern trees: An effective machine learning approach
    Huang, Zhiheng
    Nikravesh, Masoud
    Gedeon, Tamas D.
    Azvine, Ben
    FORGING NEW FRONTIERS: FUZZY PIONEERS II, 2008, 218 : 399 - +