학술논문

Algorithmic Computability and Approximability of Capacity-Achieving Input Distributions
Document Type
Periodical
Source
IEEE Transactions on Information Theory IEEE Trans. Inform. Theory Information Theory, IEEE Transactions on. 69(9):5449-5462 Sep, 2023
Subject
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Turing machines
Signal processing algorithms
Approximation algorithms
Digital computers
6G mobile communication
Task analysis
Monte Carlo methods
Capacity-achieving input distribution
turing machine
computability
approximability
Language
ISSN
0018-9448
1557-9654
Abstract
The capacity of a channel can usually be characterized as a maximization of certain entropic quantities. From a practical point of view it is of primary interest to not only compute the capacity value, but also to find the corresponding optimizer, i.e., the capacity-achieving input distribution. This paper addresses the general question of whether or not it is possible to find algorithms that can compute the optimal input distribution depending on the channel. For this purpose, the concept of Turing machines is used which provides the fundamental performance limits of digital computers and therewith fully specifies which tasks are algorithmically feasible in principle. It is shown for discrete memoryless channels that it is impossible to algorithmically compute the capacity-achieving input distribution, where the channel is given as an input to the algorithm (or Turing machine). Finally, it is further shown that it is even impossible to algorithmically approximate these input distributions.