Recently, there has been a rising surge of momentum for deep representation learning in hyperbolic spaces due to theirhigh capacity of modeling data like knowledge graphs or synonym hierarchies, possessing hierarchical structure. We refer to the model as hyperbolic deep neural network in this paper. Such a hyperbolic neural architecture potentially leads to drastically compact model withmuch more physical interpretability than its counterpart in Euclidean space. To stimulate future research, this paper presents acoherent and comprehensive review of the literature around the neural components in the construction of hyperbolic deep neuralnetworks, as well as the generalization of the leading deep approaches to the Hyperbolic space. It also presents current applicationsaround various machine learning tasks on several publicly available datasets, together with insightful observations and identifying openquestions and promising future directions.
翻译:最近,由于具有等级结构的知识图表或同义词等级结构等数据模型的建模能力很高,在双曲空间进行深层代表性学习的势头不断上升,我们在此文件中将模型称为超双曲深神经网络。这样的双曲神经结构可能导致极小的紧凑模型,其物理解释性远高于欧几里德空间的对口单位。为了刺激未来的研究,本文件对围绕神经组成部分的文献进行了一致和全面的审查,并概括了对超双曲深神经网络建设的主要深层方法,还介绍了当前对若干公开数据集的各种机器学习任务的应用,同时提出了深刻的观察意见,并确定了开放的问题和有希望的未来方向。