Hyperbolic space has been shown to produce superior low-dimensional
embeddings of hierarchical structures that are unattainable in Euclidean space.
Building upon this, the entailment cone formulation of Ganea et al. uses
geodesically convex cones to embed partial orderings in hyperbolic space.
However, these entailment cones lack intuitive interpretations due to their
definitions via complex concepts such as tangent vectors and the exponential
map in Riemannian space. In this paper, we present shadow cones, an innovative
framework that provides a physically intuitive interpretation for defining
partial orders on general manifolds. This is achieved through the use of
metaphoric light sources and object shadows, inspired by the sun-earth-moon
relationship. Shadow cones consist of two primary classes: umbral and penumbral
cones. Our results indicate that shadow cones offer robust representation and
generalization capabilities across a variety of datasets, such as WordNet and
ConceptNet, thereby outperforming the top-performing entailment cones. Our
findings indicate that shadow cones offer an innovative, general approach to
geometrically encode partial orders, enabling better representation and
analysis of datasets with hierarchical structures