June 28, Tuesday
12:00 – 13:00
Linear Index Coding via Semidefinite Programming
Computer Science seminar
Lecturer : Eden Chlamtac
Affiliation : Computer Science Department,
Location : 202/37
Host : Dr. Aryeh Kontorovich
In the index coding problem, introduced by Birk and Kol (INFOCOM, 1998), the goal is to transmit n bits to n receivers
(one bit to each), where the receivers reside at the nodes of a graph G and have prior access to the bits corresponding to their
neighbors in the graph (side information). The objective is to find a code word of minimum length which will allow each
receiver to learn their own bit given access to the code word and their side information. When the encoding is linear (this is
known as linear index coding), the minimum possible code word length corresponds to a graph parameter known as the minrank of G.
In this talk, we will describe an algorithm which approximates the minrank of a graph in the following sense: when the minrank
of the graph is a constant k, the algorithm finds a linear index code of length O(n^(f(k))). For example, for k=3 we have f(3) ~
0.2574. This algorithm exploits a connection between minrank and a semidefinite programming (SDP) relaxation for graph coloring
introduced by Karger, Motwani and Sudan.
A result which arises from our analysis, and which may be of independent interest, gives an exact expression for the maximum
possible value of the Lovasz theta-function of a graph, as a function of its minrank. This compares two classical upper
bounds on the Shannon capacity of a graph.
Based on joint work with Ishay Haviv.