December 7, Tuesday
12:00 – 14:00
In this talk I will analyze three concrete scenarios within this theme. In the area of multi party communication, I address the design of "cost efficient" codes which allow communication at capacity. Namely, combinatorial optimization in the network coding framework is considered, within which I discuss both worst case bounds on optimal costs and approximate (per instance) bounds. In the field of the design of error correcting codes for two party communication over a noisy channel, I address the well known gap between the rates achievable under the random error model (binary symmetric channel) and the Hamming error model (adversarial channel). I show that enhancing the model of two party communication by assuming that the parties involved share an extremely short secret random string allows one to close this gap. Finally, I will present relations between average and worst case analysis in algorithmic aspects of the distribution of dynamic information.
Partially based on joint work with Alexander Sprintson and Jehoshua Bruck.
Michael Langberg is a post-doc at Caltech, dept. of Computer Science.