论文标题

NAS的元学习用于医学图像应用中的几次学习

Meta-Learning of NAS for Few-shot Learning in Medical Image Applications

论文作者

Vo-Ho, Viet-Khoa, Yamazaki, Kashu, Hoang, Hieu, Tran, Minh-Triet, Le, Ngan

论文摘要

深度学习方法已经成功地解决了机器学习中的任务,并且由于其能够自动从非结构化数据中提取功能的能力而在许多领域取得了突破。但是,他们的性能依赖于手动反复试验的过程,以选择适当的网络体系结构,用于培训的超参数和预/后处理。即使已经表明,网络体系结构在数据中的学习特征表示功能和最终性能中起着至关重要的作用,但搜索最佳网络体系结构是计算密集的,并且在很大程度上依赖于研究人员的经验。自动化机器学习(AUTOML)及其高级技术,即神经体系结构搜索(NAS)已促进以解决这些限制。不仅在一般计算机视觉任务中,NAS还激发了包括医学成像在内的多个领域的各种应用。在医学成像中,NAS在提高图像分类,细分,重建等的准确性方面取得了重大进展。但是,NAS需要大量注释数据,大量的计算资源和预定义的任务。为了解决这种限制,在几乎没有学习和多个任务的情况下已经采用了元学习。在本书章节中,我们首先通过讨论搜索空间,搜索策略和评估策略中的知名方法,对NAS进行了简要审查。然后,我们在医学成像中介绍了各种NAS方法,包括不同应用,例如分类,分割,检测,重建等。然后在NAS中进行元学习,以进行几次学习和多个任务。最后,我们描述了NAS中的几个开放问题。

Deep learning methods have been successful in solving tasks in machine learning and have made breakthroughs in many sectors owing to their ability to automatically extract features from unstructured data. However, their performance relies on manual trial-and-error processes for selecting an appropriate network architecture, hyperparameters for training, and pre-/post-procedures. Even though it has been shown that network architecture plays a critical role in learning feature representation feature from data and the final performance, searching for the best network architecture is computationally intensive and heavily relies on researchers' experience. Automated machine learning (AutoML) and its advanced techniques i.e. Neural Architecture Search (NAS) have been promoted to address those limitations. Not only in general computer vision tasks, but NAS has also motivated various applications in multiple areas including medical imaging. In medical imaging, NAS has significant progress in improving the accuracy of image classification, segmentation, reconstruction, and more. However, NAS requires the availability of large annotated data, considerable computation resources, and pre-defined tasks. To address such limitations, meta-learning has been adopted in the scenarios of few-shot learning and multiple tasks. In this book chapter, we first present a brief review of NAS by discussing well-known approaches in search space, search strategy, and evaluation strategy. We then introduce various NAS approaches in medical imaging with different applications such as classification, segmentation, detection, reconstruction, etc. Meta-learning in NAS for few-shot learning and multiple tasks is then explained. Finally, we describe several open problems in NAS.

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