A Survey of Transfer Learning for Convolutional Neural Networks

R. Ribani, M. Marengoni
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引用次数: 110

Abstract

Transfer learning is an emerging topic that may drive the success of machine learning in research and industry. The lack of data on specific tasks is one of the main reasons to use it, since collecting and labeling data can be very expensive and can take time, and recent concerns with privacy make difficult to use real data from users. The use of transfer learning helps to fast prototype new machine learning models using pre-trained models from a source task since training on millions of images can take time and requires expensive GPUs. In this survey, we review the concepts and definitions related to transfer learning and we list the different terms used in the literature. We bring the point of view from different authors of prior surveys, adding some more recent findings in order to give a clear vision of directions for future work in this field of research.
卷积神经网络迁移学习研究综述
迁移学习是一个新兴的话题,它可能会推动机器学习在研究和工业中的成功。缺乏特定任务的数据是使用它的主要原因之一,因为收集和标记数据可能非常昂贵且需要时间,而且最近对隐私的担忧使得难以使用来自用户的真实数据。迁移学习的使用有助于使用来自源任务的预训练模型快速原型化新的机器学习模型,因为对数百万张图像进行训练可能需要时间,并且需要昂贵的gpu。在本调查中,我们回顾了迁移学习的相关概念和定义,并列出了文献中使用的不同术语。我们从之前的调查中引入了不同作者的观点,并添加了一些最近的发现,以便为该研究领域的未来工作提供一个清晰的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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