Abstract:
This paper studies an M-estimation-based method for linear estimation with weighted L1 regularization and its recursive implementation. Motivated by the sensitivity of co...Show MoreMetadata
Abstract:
This paper studies an M-estimation-based method for linear estimation with weighted L1 regularization and its recursive implementation. Motivated by the sensitivity of conventional least-squares-based L1-regularized linear estimation (Lasso) in impulsive noise environment, an M-estimator-based Lasso (M-Lasso) method is introduced to restrain the outliers and an iterative re-weighted least-squares (IRLS) algorithm is proposed to solve this M-estimation problem. Moreover, instead of using the matrix inversion formula, QR decomposition (QRD) is employed in the M-Lasso for recursive implementation with a lower arithmetic complexity. Simulation results show that the M-estimation-based Lasso performs considerably better than the traditional LS-based Lasso in suppressing the impulsive noise, and its recursive QRD algorithm has a good performance in online processing.
Date of Conference: 24-27 May 2009
Date Added to IEEE Xplore: 26 June 2009
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- IEEE Keywords
- Index Terms
- Model Selection ,
- Linear Approximation ,
- Recursive Implementation ,
- Recursive Algorithm ,
- QR Decomposition ,
- Impulsive Noise ,
- Lasso Method ,
- Maximum Number ,
- Estimation Error ,
- Regression Coefficients ,
- Objective Function ,
- Maximum Likelihood Estimation ,
- Number Of Observations ,
- Quadratic Function ,
- Additive Noise ,
- Larger Amplitude ,
- Batch Mode ,
- Design Matrix ,
- Threshold Parameter ,
- Current Observations ,
- Lasso Algorithm ,
- Sparse Signal ,
- Least Squares Solution ,
- Sparse Signal Recovery ,
- Ridge Regression ,
- Vector Design ,
- Pseudo-inverse ,
- Linear Model ,
- Weight Matrix
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Model Selection ,
- Linear Approximation ,
- Recursive Implementation ,
- Recursive Algorithm ,
- QR Decomposition ,
- Impulsive Noise ,
- Lasso Method ,
- Maximum Number ,
- Estimation Error ,
- Regression Coefficients ,
- Objective Function ,
- Maximum Likelihood Estimation ,
- Number Of Observations ,
- Quadratic Function ,
- Additive Noise ,
- Larger Amplitude ,
- Batch Mode ,
- Design Matrix ,
- Threshold Parameter ,
- Current Observations ,
- Lasso Algorithm ,
- Sparse Signal ,
- Least Squares Solution ,
- Sparse Signal Recovery ,
- Ridge Regression ,
- Vector Design ,
- Pseudo-inverse ,
- Linear Model ,
- Weight Matrix