Asymptotic Expansion of the Multi-Orientable Random Tensor Model

  • Eric Fusy
  • Adrian Tanasa

Abstract

Three-dimensional random tensor models are a natural generalization of the celebrated matrix models. The associated tensor graphs, or 3D maps, can be classified with respect to a particular integer or half-integer, the degree of the respective graph. In this paper we analyze the general term of the asymptotic expanion in $N$, the size of the tensor, of a particular random tensor model, the multi-orientable tensor model. We perform their enumeration and we establish which are the dominant configurations of a given degree.
Published
2015-03-06
Article Number
P1.52