Ensemble learning combines several individual models to obtain better generalization performance. Currently, deep learning models with multilayer processing architecture is showing better performance as compared to the shallow or traditional classification models. Deep ensemble learning models combine the advantages of both the deep learning models as well as the ensemble learning such that the final model has better generalization performance. This paper reviews the state-of-art deep ensemble models and hence serves as an extensive summary for the researchers. The ensemble models are broadly categorised into ensemble models like bagging, boosting and stacking, negative correlation based deep ensemble models, explicit/implicit ensembles, homogeneous /heterogeneous ensemble, decision fusion strategies, unsupervised, semi-supervised, reinforcement learning and online/incremental, multilabel based deep ensemble models. Application of deep ensemble models in different domains is also briefly discussed. Finally, we conclude this paper with some future recommendations and research directions.
翻译:与浅层或传统分类模型相比,目前,与多层处理结构的深层学习模型表现出较好的性能。深层混合学习模型结合了深层学习模型的优点以及共同学习模型的优点,这样最后模型就能更好地概括性性能。本文回顾了最先进的深层混合模型,从而成为研究人员的广泛摘要。混合模型被广泛分为混合模型,如包装、提振和堆叠、基于底层关系的深层混合模型、清晰/不完全的混合模型、同质/异质共构件、决定融合战略、无监督、半监督、强化学习和在线/内在多标签的深层混合模型。还简要讨论了在不同领域应用深层混合模型的情况。最后,我们以一些未来的建议和研究方向来完成这份文件。