论文标题
深度学习中的可转移性:调查
Transferability in Deep Learning: A Survey
论文作者
论文摘要
深度学习算法的成功通常取决于大规模数据,而人类似乎具有固有的知识转移能力,通过在遇到和解决看不见的任务时识别和运用以前的学习经历中的相关知识。这种获取和重用知识的能力被称为深度学习中的可转移性。它已经形成了长期的追求,以使深度学习能够像人类学习一样效率,并激励着更强大的深度学习算法的富有成果的设计。我们介绍了这项调查,以将深度学习的不同孤立区域与它们与可转移性有关,并通过深度学习的整个生命周期提供统一和完整的观点。该调查详细阐述了与核心原则和方法并行的基本目标和挑战,涵盖了深层建筑,预训练,任务适应和域适应的最新基石。这突出了有关学习可转移知识并将知识适应新任务和领域的适当目标的未解决问题,避免了灾难性的遗忘和负面转移。最后,我们实施了一个基准和开源库,从而可以在可转让性方面对深度学习方法进行公平的评估。
The success of deep learning algorithms generally depends on large-scale data, while humans appear to have inherent ability of knowledge transfer, by recognizing and applying relevant knowledge from previous learning experiences when encountering and solving unseen tasks. Such an ability to acquire and reuse knowledge is known as transferability in deep learning. It has formed the long-term quest towards making deep learning as data-efficient as human learning, and has been motivating fruitful design of more powerful deep learning algorithms. We present this survey to connect different isolated areas in deep learning with their relation to transferability, and to provide a unified and complete view to investigating transferability through the whole lifecycle of deep learning. The survey elaborates the fundamental goals and challenges in parallel with the core principles and methods, covering recent cornerstones in deep architectures, pre-training, task adaptation and domain adaptation. This highlights unanswered questions on the appropriate objectives for learning transferable knowledge and for adapting the knowledge to new tasks and domains, avoiding catastrophic forgetting and negative transfer. Finally, we implement a benchmark and an open-source library, enabling a fair evaluation of deep learning methods in terms of transferability.