Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: In this article the notion of the nondecreasing (ND) rank of a matrix or
tensor is introduced. A tensor has an ND rank of r if it can be represented as
a sum of r outer products of vectors, with each vector satisfying a
monotonicity constraint. It is shown that for certain poset orderings finding
an ND factorization of rank $r$ is equivalent to finding a nonnegative rank-r
factorization of a transformed tensor. However, not every tensor that is
monotonic has a finite ND rank. Theory is developed describing the properties
of the ND rank, including typical, maximum, and border ND ranks. Highlighted
also are the special settings where a matrix or tensor has an ND rank of one or
two. As a means of finding low ND rank approximations to a data tensor we
introduce a variant of the hierarchical alternating least squares algorithm.
Low ND rank factorizations are found and interpreted for two datasets
concerning the weight of pigs and a mental health survey during the COVID-19
pandemic.