论文标题
可交换数据的基于能源的流程
Energy-Based Processes for Exchangeable Data
论文作者
论文摘要
最近,人们对使用交换性(例如点云)进行建模越来越兴趣。当前方法的缺点是,它们限制了所考虑的集合的基数或只能表达有限的分布形式,而不是未观察到的数据。为了克服这些局限性,我们引入了基于能量的过程(EBP),该过程将基于能量的模型扩展到可交换的数据,同时允许能量函数的神经网络参数化。这些模型的关键优势是能够在不限制其基数的情况下表达更灵活的分布。我们为EBP开发了有效的培训程序,该程序在各种任务上展示了最先进的表现,例如生成云,分类,降解和图像完成。
Recently there has been growing interest in modeling sets with exchangeability such as point clouds. A shortcoming of current approaches is that they restrict the cardinality of the sets considered or can only express limited forms of distribution over unobserved data. To overcome these limitations, we introduce Energy-Based Processes (EBPs), which extend energy based models to exchangeable data while allowing neural network parameterizations of the energy function. A key advantage of these models is the ability to express more flexible distributions over sets without restricting their cardinality. We develop an efficient training procedure for EBPs that demonstrates state-of-the-art performance on a variety of tasks such as point cloud generation, classification, denoising, and image completion.