Title :
PETRELS: Parallel Subspace Estimation and Tracking by Recursive Least Squares From Partial Observations
Author :
Yuejie Chi ; Eldar, Yonina C. ; Calderbank, R.
Author_Institution :
Dept. of Electr. & Comput. Eng., Ohio State Univ., Columbus, OH, USA
Abstract :
Many real world datasets exhibit an embedding of low-dimensional structure in a high-dimensional manifold. Examples include images, videos and internet traffic data. It is of great significance to estimate and track the low-dimensional structure with small storage requirements and computational complexity when the data dimension is high. Therefore we consider the problem of reconstructing a data stream from a small subset of its entries, where the data is assumed to lie in a low-dimensional linear subspace, possibly corrupted by noise. We further consider tracking the change of the underlying subspace, which can be applied to applications such as video denoising, network monitoring and anomaly detection. Our setting can be viewed as a sequential low-rank matrix completion problem in which the subspace is learned in an online fashion. The proposed algorithm, dubbed Parallel Estimation and Tracking by REcursive Least Squares (PETRELS), first identifies the underlying low-dimensional subspace, and then reconstructs the missing entries via least-squares estimation if required. Subspace identification is performed via a recursive procedure for each row of the subspace matrix in parallel with discounting for previous observations. Numerical examples are provided for direction-of-arrival estimation and matrix completion, comparing PETRELS with state of the art batch algorithms.
Keywords :
computational complexity; data communication; direction-of-arrival estimation; least squares approximations; PETRELS; anomaly detection; computational complexity; high-dimensional manifold; internet traffic data; least-squares estimation; low-dimensional linear subspace; low-dimensional structure; low-dimensional subspace; low-rank matrix completion problem; network monitoring; parallel subspace estimation; partial observations; recursive least squares; recursive procedure; subspace matrix; tracking; video denoising; Approximation algorithms; Convergence; Estimation; Least squares approximations; Signal processing algorithms; Sparse matrices; Vectors; Matrix completion; online algorithms; partial observations; recursive least squares; subspace identification and tracking;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2282910