We propose a nonnegative tensor decomposition with focusing on the relationship between the modes of tensors. Traditional decomposition methods assume low-rankness in the representation, resulting in difficulties in global optimization and target rank selection. To address these problems, we present an alternative way to decompose tensors, a many-body approximation for tensors, based on an information geometric formulation. A tensor is treated via an energy-based model, where the tensor and its mode correspond to a probability distribution and a random variable, respectively, and many-body approximation is performed on it by taking the interaction between variables into account. Our model can be globally optimized in polynomial time in terms of the KL divergence minimization, which is empirically faster than low-rank approximations keeping comparable reconstruction error. Furthermore, we visualize interactions between modes as tensor networks and reveal a nontrivial relationship between many-body approximation and low-rank approximation.
翻译:为了解决这些问题,我们提出了一种基于信息几何配方的分解方法。一种非负向的分解方法,其重点是发压模式之间的关系。传统的分解方法假定代表比例低,导致全球优化和目标等级选择方面的困难。为了解决这些问题,我们提出了一种基于信息几何配方的分解数的替代方法,即对发压器进行多体近似。一种分解法通过一种基于能源的模型处理,即发压及其模式分别对应概率分布和随机变量,而多体近似则通过考虑到变量之间的相互作用来进行。从实验上看,从最小化 KL 的多元时间来看,我们的模式可以在全球实现优化,而最小化是比保持类似重建错误的低位近似速度更快的。此外,我们把各种模式之间的互动看成是发压网络,并揭示了多体近似和低级近似之间的非动态关系。