Reconstruction of Modular Data from SL₂(Z) Representations

Abstract Modular data is a significant invariant of a modular tensor category. We pursue an approach to the classification of modular data of modular tensor categories by building the modular S and T matrices directly from irreducible representations of...

Full description

Bibliographic Details
Main Authors: Ng, Siu-Hung, Rowell, Eric C., Wang, Zhenghan, Wen, Xiao-Gang
Other Authors: Massachusetts Institute of Technology. Department of Physics
Format: Article
Language:English
Published: Springer Berlin Heidelberg 2023
Online Access:https://hdl.handle.net/1721.1/152264
Description
Summary:Abstract Modular data is a significant invariant of a modular tensor category. We pursue an approach to the classification of modular data of modular tensor categories by building the modular S and T matrices directly from irreducible representations of $${{\text {SL}}_2({\mathbb {Z}}/ n {\mathbb {Z}})}$$ SL 2 ( Z / n Z ) . We discover and collect many conditions on the $${{\text {SL}}_2({\mathbb {Z}}/ n {\mathbb {Z}})}$$ SL 2 ( Z / n Z ) representations to identify those that correspond to some modular data. To arrive at concrete matrices from representations, we also develop methods that allow us to select the proper basis of the $${{\text {SL}}_2({\mathbb {Z}}/ n {\mathbb {Z}})}$$ SL 2 ( Z / n Z ) representations so that they have the form of modular data. We apply this technique to the classification of rank-6 modular tensor categories, obtaining a classification of modular data, up to Galois conjugation and changing spherical structure. Most of the calculations can be automated using a computer algebraic system, which can be employed to classify modular data of higher rank modular tensor categories. Our classification employs a hybrid of automated computational methods and by-hand calculations.