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Nature Inspired Meta-heuristic Algorithms for Deep Learning: Recent Progress and Novel Perspective

机译:自然启发了荟萃启发式算法的深度学习:最近的进展和小说视角

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Deep learning is presently attracting extra ordinary attention from both the industry and the academia. The application of deep learning in computer vision has recently gain popularity. The optimization of deep learning models through nature inspired algorithms is a subject of debate in computer science. The application areas of the hybrid of natured inspired algorithms and deep learning architecture includes: machine vision and learning, image processing, data science, autonomous vehicles, medical image analysis, biometrics, etc. In this paper, we present recent progress on the application of nature inspired algorithms in deep learning. The survey pointed out recent development issues, strengths, weaknesses and prospects for future research. A new taxonomy is created based on natured inspired algorithms for deep learning. The trend of the publications in this domain is depicted; it shows the research area is growing but slowly. The deep learning architectures not exploit by the nature inspired algorithms for optimization are unveiled. We believed that the survey can facilitate synergy between the nature inspired algorithms and deep learning research communities. As such, massive attention can be expected in a near future.
机译:深度学习目前吸引了来自行业和学术界的额外普通关注。深度学习在计算机视觉中的应用最近获得了人气。通过自然启发算法优化深度学习模型是计算机科学辩论的主题。自然启发算法的混合动力和深度学习架构的应用领域包括:机器视觉和学习,图像处理,数据科学,自治车辆,医学图像分析,生物识别技术等。在本文中,我们对应用的最新进展自然灵感算法深入学习。该调查指出了最近的发展问题,优势,弱点和未来研究前景。基于Leave学习的预定启发算法创建了一种新的分类学。描述了该领域的出版物的趋势;它显示研究区域正在增长,但缓慢。不受自然启发算法用于优化的深度学习架构。我们认为该调查可以促进自然启发算法与深层学习的社区之间的协同作用。因此,可以在不久的将来预期大规模关注。

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