Due to the dominant position of deep learning (mostly deep neural networks) in various artificial intelligence applications, recently, ensemble learning based on deep neural networks (ensemble deep learning) has shown significant performances in improving the generalization of learning system. However, since modern deep neural networks usually have millions to billions of parameters, the time and space overheads for training multiple base deep learners and testing with the ensemble deep learner are far greater than that of traditional ensemble learning. Though several algorithms of fast ensemble deep learning have been proposed to promote the deployment of ensemble deep learning in some applications, further advances still need to be made for many applications in specific fields, where the developing time and computing resources are usually restricted or the data to be processed is of large dimensionality. An urgent problem needs to be solved is how to take the significant advantages of ensemble deep learning while reduce the required expenses so that many more applications in specific fields can benefit from it. For the alleviation of this problem, it is essential to know about how ensemble learning has developed under the era of deep learning. Thus, in this article, we present fundamental discussions focusing on data analyses of published works, methodologies, recent advances and unattainability of traditional ensemble learning and ensemble deep learning. We hope this article will be helpful to realize the intrinsic problems and technical challenges faced by future developments of ensemble learning under the era of deep learning.
翻译:由于在各种人工智能应用中具有深层次学习(主要是深层神经网络)的主导地位,最近,基于深层神经网络的全方位学习(整体深层学习)显示出在改进学习系统一般化方面的显著表现,然而,由于现代深层神经网络通常有数百万至数十亿参数,培训多基深层学习者和与全深层学习者进行测试所需的时间和空间间接费用远远大于传统共同学习的优势。虽然已提出一些快速混合深层学习的算法,以促进在某些应用中部署共同深层学习,但在具体领域的许多应用方面仍需取得进一步的进展,因为开发的时间和计算资源通常有限,或处理的数据具有很大的多维度。迫切需要解决的问题是如何利用堆积深的深层学习的优势,同时减少必要的费用,使具体领域的更多应用能够从中受益。为了缓解这一问题,我们必须了解在深层次学习的时代,如何在深层次学习的时代中发展共同学习,如何发展。因此,在目前这一条款中,我们应集中研究如何利用可实现的深层次学习方法。