A Review of Deep Transfer Learning and Recent Advancements

ArXiv Pub Date : 2022-01-19 DOI:10.3390/technologies11020040
Mohammadreza Iman, K. Rasheed, H. Arabnia
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引用次数: 59

Abstract

Deep learning has been the answer to many machine learning problems during the past two decades. However, it comes with two significant constraints: dependency on extensive labeled data and training costs. Transfer learning in deep learning, known as Deep Transfer Learning (DTL), attempts to reduce such reliance and costs by reusing obtained knowledge from a source data/task in training on a target data/task. Most applied DTL techniques are network/model-based approaches. These methods reduce the dependency of deep learning models on extensive training data and drastically decrease training costs. Moreover, the training cost reduction makes DTL viable on edge devices with limited resources. Like any new advancement, DTL methods have their own limitations, and a successful transfer depends on specific adjustments and strategies for different scenarios. This paper reviews the concept, definition, and taxonomy of deep transfer learning and well-known methods. It investigates the DTL approaches by reviewing applied DTL techniques in the past five years and a couple of experimental analyses of DTLs to discover the best practice for using DTL in different scenarios. Moreover, the limitations of DTLs (catastrophic forgetting dilemma and overly biased pre-trained models) are discussed, along with possible solutions and research trends.
深度迁移学习综述及最新进展
在过去的二十年里,深度学习已经成为许多机器学习问题的答案。然而,它有两个重要的限制:对大量标记数据的依赖和培训成本。深度学习中的迁移学习,被称为深度迁移学习(DTL),试图通过在目标数据/任务的训练中重用从源数据/任务获得的知识来减少这种依赖和成本。大多数应用的DTL技术是基于网络/模型的方法。这些方法减少了深度学习模型对大量训练数据的依赖,大大降低了训练成本。此外,训练成本的降低使得DTL在资源有限的边缘设备上可行。与任何新的进步一样,DTL方法也有其自身的局限性,成功的转移取决于针对不同场景的具体调整和策略。本文综述了深度迁移学习的概念、定义、分类和常用方法。它通过回顾过去五年来应用的DTL技术和对DTL的一些实验分析来研究DTL方法,以发现在不同场景中使用DTL的最佳实践。此外,本文还讨论了dtl的局限性(灾难性遗忘困境和过度偏向的预训练模型),以及可能的解决方案和研究趋势。
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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