Leveraging Autoencoders for Better Representation Learning

被引:0
|
作者
Achary, Maria [1 ,3 ]
Abraham, Siby [2 ]
机构
[1] Univ Mumbai, Mumbai, India
[2] NMIMS Deemed Be Univ, Mumbai, India
[3] Univ Mumbai, Dept Comp Sci, Mumbai 400098, India
关键词
Autoencoders; Parkinson's disease; dimensionality reduction techniques; representation learning; machine learning; magnetic resonance imaging; deep learning; PARKINSONS-DISEASE; DIAGNOSIS;
D O I
10.1080/08874417.2024.2349142
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The effectiveness of a machine learning algorithm depends to a considerable extent on the representation used for the modeling. It is more critical with medical image data like Parkinson's, where complexity plays a significant role. The paper proposes a methodology that leverages representation learning in Parkinson's disease data. It uses seven types of autoencoders as learning techniques, identifying the best among them. The method is validated using three additional measures: Firstly, another dataset of Parkinson's is used to confirm its effectiveness, thereby making the method dataset-agnostic. Secondly, seven machine-learning techniques formulate the problem in a supervised learning setting by taking the representation given by the best autoencoder as the features and the disease stage as the labels. Lastly, it uses three-dimensionality reduction techniques to visualize these latent variables or representations in a lower dimension. The high accuracy demonstrated at the supervised learning level, and the formation of patterns exhibited at the visualization level demonstrate the effectiveness of the proposed methodology.
引用
收藏
页数:21
相关论文
共 50 条
  • [31] Leveraging Variational Autoencoders for Multiple Data Imputation
    Roskams-Hieter, Breeshey
    Wells, Jude
    Wade, Sara
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES: RESEARCH TRACK, ECML PKDD 2023, PT I, 2023, 14169 : 491 - 506
  • [32] Leveraging Variational Autoencoders for Parameterized MMSE Estimation
    Baur, Michael
    Fesl, Benedikt
    Utschick, Wolfgang
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2024, 72 : 3731 - 3744
  • [33] An analysis on the use of autoencoders for representation learning: Fundamentals, learning task case studies, explainability and challenges
    Charte, David
    Charte, Francisco
    del Jesus, Maria J.
    Herrera, Francisco
    NEUROCOMPUTING, 2020, 404 : 93 - 107
  • [34] Semi-supervised representation learning via dual autoencoders for domain adaptation
    Yang, Shuai
    Wang, Hao
    Zhang, Yuhong
    Li, Peipei
    Zhu, Yi
    Hu, Xuegang
    KNOWLEDGE-BASED SYSTEMS, 2020, 190 (190)
  • [35] Learn from Incomplete Tactile Data: Tactile Representation Learning with Masked Autoencoders
    Cao, Guanqun
    Jiang, Jiaqi
    Bollegala, Danushka
    Luo, Shan
    2023 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2023, : 10800 - 10805
  • [36] UNSUPERVISED REPRESENTATION LEARNING WITH PRIOR-FREE AND ADVERSARIAL MECHANISM EMBEDDED AUTOENCODERS
    Gao, Xing
    Xiong, Hongkai
    2018 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO (ICME), 2018,
  • [37] Enhancing photovoltaic module fault diagnosis: Leveraging unmanned aerial vehicles and autoencoders in machine learning
    Prasshanth, C. V.
    Venkatesh, S. Naveen
    Sugumaran, V.
    Aghaei, Mohammadreza
    SUSTAINABLE ENERGY TECHNOLOGIES AND ASSESSMENTS, 2024, 64
  • [38] Hierarchical graph augmented stacked autoencoders for multi-view representation learning
    Gou, Jianping
    Xie, Nannan
    Liu, Jinhua
    Yu, Baosheng
    Ou, Weihua
    Yi, Zhang
    Chen, Wu
    INFORMATION FUSION, 2024, 102
  • [39] Efficient Spiking Variational Graph Autoencoders for Unsupervised Graph Representation Learning Tasks
    Yang, Hanxuan
    Kong, Qingchao
    Zhang, Ruike
    Mao, Wenji
    IEEE INTELLIGENT SYSTEMS, 2024, 39 (05) : 37 - 46
  • [40] SPARSE REPRESENTATION LEARNING OF DATA BY AUTOENCODERS WITH L1/2 REGULARIZATION
    Li, F.
    Zurada, J. M.
    Wu, W.
    NEURAL NETWORK WORLD, 2018, 28 (02) : 133 - 147