Energy-Based Models (EBMs) have proven to be a highly effective approach for modelling densities on finite-dimensional spaces. Their ability to incorporate domain-specific choices and constraints into the structure of the model through composition make EBMs an appealing candidate for applications in physics, biology and computer vision and various other fields. In this work, we present a novel class of EBM which is able to learn distributions of functions (such as curves or surfaces) from functional samples evaluated at finitely many points. Two unique challenges arise in the functional context. Firstly, training data is often not evaluated along a fixed set of points. Secondly, steps must be taken to control the behaviour of the model between evaluation points, to mitigate overfitting. The proposed infinite-dimensional EBM employs a latent Gaussian process, which is weighted spectrally by an energy function parameterised with a neural network. The resulting EBM has the ability to utilize irregularly sampled training data and can output predictions at any resolution, providing an effective approach to up-scaling functional data. We demonstrate the efficacy of our proposed approach for modelling a range of datasets, including data collected from Standard and Poor's 500 (S\&P) and UK National grid.
翻译:以能源为基础的模型(EBM)被证明是模拟有限空间密度的高度有效方法。它们通过构成将特定领域的选择和制约因素纳入模型结构的能力使EBM成为物理学、生物学和计算机视觉以及其他各个领域应用的吸引对象。在这项工作中,我们提出了一个新型EBM类别,它能够从有限多点评估的功能样本中学习功能分布(如曲线或表面),在功能方面出现两个独特的挑战。首先,培训数据往往没有按照固定的一组点来评估。第二,必须采取步骤控制模型在评估点之间的行为,以缓解过宽。拟议的无限度EBM采用了潜伏的高空程序,以与神经网络相配的能源功能参数为光谱。由此形成的EBM有能力利用不定期抽样的培训数据,并能够在任何分辨率上输出预测,为升级功能数据提供有效的方法。我们提出的模拟一系列数据集的方法(包括从英国标准局和普罗尔的数据)的功效。