夏恒, 汤健, 乔俊飞. 深度森林研究综述[J]. 北京工业大学学报, 2022, 48(2): 182-196. DOI: 10.11936/bjutxb2020120017
    引用本文: 夏恒, 汤健, 乔俊飞. 深度森林研究综述[J]. 北京工业大学学报, 2022, 48(2): 182-196. DOI: 10.11936/bjutxb2020120017
    XIA Heng, TANG Jian, QIAO Junfei. Review of Deep Forest[J]. Journal of Beijing University of Technology, 2022, 48(2): 182-196. DOI: 10.11936/bjutxb2020120017
    Citation: XIA Heng, TANG Jian, QIAO Junfei. Review of Deep Forest[J]. Journal of Beijing University of Technology, 2022, 48(2): 182-196. DOI: 10.11936/bjutxb2020120017

    深度森林研究综述

    Review of Deep Forest

    • 摘要: 深度森林算法首次开启了非神经网络结构的深度学习模式,并因具有非微分形式基学习器和无须大量训练数据的优良特性,已经成为工业界和学术界的重要研究方向,因此,对现有深度森林算法进行归纳和总结,综述了其主要结构及特点. 首先,介绍深度森林结构及其性质;接着,将目前深度森林的研究分为引入特征工程、改进表征学习、修改基学习器、修改层级结构和引入权重配置等5个方向进行分析和总结;然后,介绍深度森林算法在不同领域中的最新应用现状,并给出深度森林算法所面临的挑战及未来研究方向;最后,对本文工作进行总结.

       

      Abstract: In nature, the deep forest (DF) algorithm opened the deep learning model of non-neural network structure firstly. Due to the characteristics of non-differential form-based learners and without requiring a large amount of training data, DF has become an important direction in the industry and academic domain. Thus, the existing DF algorithm was generalized and summarized, in which its main structure and characteristics were reviewed. First, the structure and properties of DF were introduced. Further, the current research was classed into five research directions, i.e., introducing feature engineering, improving representation learning, modifying base learner, modifying the hierarchical structure, and introducing weight configuration, which were analyzed and summarized, respectively. Then, the state of the art application status of DF algorithms in different fields was introduced and the challenges and future research direction of the DF algorithm were proposed. Finally, the work of this paper was summarized.

       

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