Contemporary data-driven methods are typically fed with full supervision on large-scale datasets which limits their applicability. However, in the actual systems with limitations such as measurement error and data acquisition problems, people usually obtain incomplete data. Although data completion has attracted wide attention, the underlying data pattern and relativity are still under-developed. Currently, the family of latent variable models allows learning deep latent variables over observed variables by fitting the marginal distribution. As far as we know, current methods fail to perceive the data relativity under partial observation. Aiming at modeling incomplete data, this work uses relational inference to fill in the incomplete data. Specifically, we expect to approximate the real joint distribution over the partial observation and latent variables, thus infer the unseen targets respectively. To this end, we propose Omni-Relational Network (OR-Net) to model the pointwise relativity in two aspects: (i) On one hand, the inner relationship is built among the context points in the partial observation; (ii) On the other hand, the unseen targets are inferred by learning the cross-relationship with the observed data points. It is further discovered that the proposed method can be generalized to different scenarios regardless of whether the physical structure can be observed or not. It is demonstrated that the proposed OR-Net can be well generalized for data completion tasks of various modalities, including function regression, image completion on MNIST and CelebA datasets, and also sequential motion generation conditioned on the observed poses.
翻译:现代数据驱动的方法通常在大规模数据集上得到充分监督,从而限制其适用性。然而,在测量错误和数据获取问题等限制因素的实际系统中,人们通常获得不完全的数据。虽然数据完成过程吸引了广泛的关注,但基础数据模式和相对性仍然开发不足。目前,潜伏变量模型的组合通过与边际分布相匹配,可以对所观察到的变量学习深潜变数。据我们所知,目前的方法未能在部分观察中看到数据相对性。为了模拟不完整的数据,这项工作使用了相关推论来填补不完整的数据。具体地说,我们期望将部分观察和潜在变量的真正联合分布相近一些,从而分别推断出不可见的目标。为此,我们提议Omni关系网络(OR-Net)在两个方面进行点上建模。(一) 一方面,目前的方法在部分观察中的背景点之间没有建立内在关系;(二) 在另一方面,通过学习与所观测的数据的不完全链接点之间的关联性推断,从而可以推断出看不见的目标。我们进一步发现,无论拟议的实际完成方式是多少的周期性数据结构,也可以证明是否普遍地显示,包括各种的完成方式。