• DocumentCode
    1371150
  • Title

    Inferring Rankings Using Constrained Sensing

  • Author

    Jagabathula, Srikanth ; Shah, Devavrat

  • Author_Institution
    Stern Sch. of Bus., New York Univ., New York, NY, USA
  • Volume
    57
  • Issue
    11
  • fYear
    2011
  • Firstpage
    7288
  • Lastpage
    7306
  • Abstract
    We consider the problem of recovering a function over the space of permutations (or, the symmetric group) over n elements from given partial information; the partial information we consider is related to the group theoretic Fourier Transform of the function. This problem naturally arises in several settings such as ranked elections, multi-object tracking, ranking systems, and recommendation systems. Inspired by the work of Donoho and Stark in the context of discrete-time functions, we focus on non-negative functions with a sparse support (support size <;<; domain size). Our recovery method is based on finding the sparsest solution (through l0 optimization) that is consistent with the available information. As the main result, we derive sufficient conditions for functions that can be recovered exactly from partial information through l0 optimization. Under a natural random model for the generation of functions, we quantify the recoverability conditions by deriving bounds on the sparsity (support size) for which the function satisfies the sufficient conditions with a high probability as n → ∞. ℓ0 optimization is computationally hard. Therefore, the popular compressive sensing literature considers solving the convex relaxation, ℓ1 optimization, to find the sparsest solution. However, we show that ℓ1 optimization fails to recover a function (even with constant sparsity) generated using the random model with a high probability as n → ∞. In order to overcome this problem, we propose a novel iterative algorithm for the recovery of functions that satisfy the sufficient conditions. Finally, using an Information Theoretic framework, we study necessary conditions for exact recovery to be possible.
  • Keywords
    Fourier transforms; convex programming; data compression; group theory; random functions; signal reconstruction; ℓ1 optimization; compressive sensing; constrained sensing; convex relaxation; discrete-time functions; group theoretic Fourier transform; information theoretic framework; multiobject tracking; natural random model; nonnegative functions; ranking systems; recommendation systems; Algorithm design and analysis; Fourier transforms; Optimization; Compressive sensing; Fourier analysis over symmetric group; functions over permutations; sparsest-fit;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.2011.2165827
  • Filename
    6071756