Title :
Rank Minimization Over Finite Fields: Fundamental Limits and Coding-Theoretic Interpretations
Author :
Tan, Vincent Y F ; Balzano, Laura ; Draper, Stark C.
Author_Institution :
Dept. of Electr. & Comput. Eng. (ECE), Univ. of Wisconsin, Madison, WI, USA
fDate :
4/1/2012 12:00:00 AM
Abstract :
This paper establishes information-theoretic limits for estimating a finite-field low-rank matrix given random linear measurements of it. These linear measurements are obtained by taking inner products of the low-rank matrix with random sensing matrices. Necessary and sufficient conditions on the number of measurements required are provided. It is shown that these conditions are sharp and the minimum-rank decoder is asymptotically optimal. The reliability function of this decoder is also derived by appealing to de Caen´s lower bound on the probability of a union. The sufficient condition also holds when the sensing matrices are sparse-a scenario that may be amenable to efficient decoding. More precisely, it is shown that if the n × n-sensing matrices contain, on average, Ω(nlog n) entries, the number of measurements required is the same as that when the sensing matrices are dense and contain entries drawn uniformly at random from the field. Analogies are drawn between the aforementioned results and rank-metric codes in the coding theory literature. In fact, we are also strongly motivated by understanding when minimum rank distance decoding of random rank-metric codes succeeds. To this end, we derive minimum distance properties of equiprobable and sparse rank-metric codes. These distance properties provide a precise geometric interpretation of the fact that the sparse ensemble requires as few measurements as the dense one.
Keywords :
decoding; linear codes; reliability; sparse matrices; coding-theoretic interpretation; de Caen lower bound; decoder reliability function; equiprobable property; finite-field low-rank matrix estimation; information-theoretic limit; minimum rank distance decoding; minimum-rank decoder; probability; random linear measurement; random rank-metric code; random sensing matrix; rank minimization; sensing sparse matrix; Decoding; Linear matrix inequalities; Minimization; Noise measurement; Reliability; Sensors; Sparse matrices; Finite fields; minimum rank distance properties; rank minimization; rank-metric codes; reliability function; sparse parity-check matrices;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2178017