The standard approaches to neural network implementation yield powerful function approximation capabilities but are limited in their abilities to learn meta representations and reason probabilistic uncertainties in their predictions. Gaussian processes, on the other hand, adopt the Bayesian learning scheme to estimate such uncertainties but are constrained by their efficiency and approximation capacity. The Neural Processes Family (NPF) intends to offer the best of both worlds by leveraging neural networks for meta-learning predictive uncertainties. Such potential has brought substantial research activity to the family in recent years. Therefore, a comprehensive survey of NPF models is needed to organize and relate their motivation, methodology, and experiments. This paper intends to address this gap while digging deeper into the formulation, research themes, and applications concerning the family members. We shed light on their potential to bring several recent advances in other deep learning domains under one umbrella. We then provide a rigorous taxonomy of the family and empirically demonstrate their capabilities for modeling data generating functions operating on 1-d, 2-d, and 3-d input domains. We conclude by discussing our perspectives on the promising directions that can fuel the research advances in the field. Code for our experiments will be made available at https://github.com/srvCodes/neural-processes-survey.
翻译:神经网络实施的标准方法产生了强大的功能近似能力,但这种能力有限,无法了解元表和预测中预测的概率不确定性。另一方面,高斯进程采用贝叶斯学习计划来估计这种不确定性,但受到其效率和近似能力的制约。神经进程家庭(NPF)打算利用神经网络来利用神经网络进行元学习预测不确定性,从而向世界提供最佳服务。这种潜力近年来为家庭带来了大量研究活动。因此,需要对国家公共基金模型进行全面调查,以组织和联系其动机、方法和实验。本文打算填补这一空白,同时更深入地探讨有关家庭成员的拟订、研究主题和应用。我们要说明它们的潜力,以便在一个伞下在其他深层学习领域取得一些最新进展。然后,我们提供严格的家庭分类,并用经验证明它们有能力建模在1-d、2-d和3-d输入领域运作的数据生成功能。我们最后要讨论我们的观点,说明哪些有希望的方向可以促进实地研究的进展、研究主题、主题和应用。我们实验的守则将在一个伞/Cogrubs进行。