We present Multi-chart flows, a flow-based model for concurrently learning topologically non-trivial manifolds and statistical densities on them. Current methods focus on manifolds that are topologically Euclidean, enforce strong structural priors on the learned models or use operations that do not scale to high dimensions. In contrast, our model learns the local manifold topology piecewise by "gluing" it back together through a collection of learned coordinate charts. We demonstrate the efficiency of our approach on synthetic data of known manifolds, as well as higher dimensional manifolds of unknown topology, where we show better sample efficiency and competitive or superior performance against current state-of-the-art.
翻译:我们提出了多图流,这是一个流动模型,用于同时学习其表层性非三元元元和统计密度。目前的方法侧重于具有表层性欧clidean的多元物,对所学模型实施强有力的结构前科,或使用规模不高的操作。相反,我们的模型通过收集一系列有知识的协调图表,“将之融合在一起”来学习本地多元表。我们展示了我们对已知的多元物的合成数据方法的效率,以及未知地表学的更高维度的多元物,我们在那里展示了更好的样本效率,以及相对于当前最新技术的竞争性或优异性表现。