论文标题
部分可观测时空混沌系统的无模型预测
The DAWES review 10: The impact of deep learning for the analysis of galaxy surveys
论文作者
论文摘要
在过去的几年中,现代星系调查提供的数据的数量和复杂性一直在稳步增加。从这些大型和多模式数据集中提取连贯的科学信息仍然是一个空旷的问题,并且诸如深度学习之类的数据驱动方法已迅速成为解决一些持久挑战的潜在强大解决方案。这种热情反映在使用神经网络的出版物呈指数级增长中。在提到深度学习的首次发表的天文学工作五年后,我们认为及时回顾了这项新技术在该领域的真正影响及其解决新数据集规模和复杂性提出的关键挑战的潜力。在这篇评论中,我们首先旨在总结到目前为止出现的银河调查的深度学习的主要应用。然后,我们提取学到的主要成就和经验教训,并突出关键的开放问题和局限性。总体而言,天文学界迅速采用了最先进的深度学习方法,这反映了这些方法的民主化。我们表明,使用深度学习的大多数作品面向计算机视觉任务。这也是应用的领域,深度学习带来了迄今为止最重要的突破。我们报告说,应用程序变得越来越多样化,深度学习用于估计星系特性,识别异常值或限制宇宙学模型。这些作品中的大多数仍处于探索水平。在进行未来调查的处理中,很可能需要解决一些共同的挑战。例如不确定性量化,可解释性,数据标记和域转移来自模拟培训的问题,这构成了天文学的共同实践。
The amount and complexity of data delivered by modern galaxy surveys has been steadily increasing over the past years. Extracting coherent scientific information from these large and multi-modal data sets remains an open issue and data driven approaches such as deep learning have rapidly emerged as a potentially powerful solution to some long lasting challenges. This enthusiasm is reflected in an unprecedented exponential growth of publications using neural networks. Half a decade after the first published work in astronomy mentioning deep learning, we believe it is timely to review what has been the real impact of this new technology in the field and its potential to solve key challenges raised by the size and complexity of the new datasets. In this review we first aim at summarizing the main applications of deep learning for galaxy surveys that have emerged so far. We then extract the major achievements and lessons learned and highlight key open questions and limitations. Overall, state-of-the art deep learning methods are rapidly adopted by the astronomical community, reflecting a democratization of these methods. We show that the majority of works using deep learning up to date are oriented to computer vision tasks. This is also the domain of application where deep learning has brought the most important breakthroughs so far. We report that the applications are becoming more diverse and deep learning is used for estimating galaxy properties, identifying outliers or constraining the cosmological model. Most of these works remain at the exploratory level. Some common challenges will most likely need to be addressed before moving to the next phase of deployment of deep learning in the processing of future surveys; e.g. uncertainty quantification, interpretability, data labeling and domain shift issues from training with simulations, which constitutes a common practice in astronomy.