A Study of Modern Sparse Estimation Analysis in Applied Statistics Lasso Penalty
| Vol-4 | Issue-03 | March 2019 | Published Online: 13 March 2019 PDF ( 551 KB ) | ||
| Author(s) | ||
| Varade Nitin Kumar Narahari 1; Dr. Sudesh Kumar 2 | ||
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1Research Scholar OPJS University Churu Rajasthan 2Associate Professor OPJS University Churu Rajasthan |
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| Abstract | ||
The paper proposes a new covariance estimator for large covariance matrices when the variables have a natural ordering. Using the Cholesky decomposition of the inverse, we impose a banded structure on the Cholesky factor, and select the bandwidth adaptively for each row of the Cholesky factor, using a novel penalty we call nested Lasso. This structure has more flexibility than regular banding, but, unlike regular Lasso applied to the entries of the Cholesky factor, results in a sparse estimator for the inverse of the covariance matrix. An iterative algorithm for solving the optimization problem is developed. The estimator is compared to a number of other covariance estimators and is shown to do best, both in simulations and on a real data example. Simulations show that the margin by which the estimator outperforms its competitors tends to increase with dimension. |
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| Keywords | ||
| Sparse Analysis, applied statistics, large covariance matrices, optimization problem, algorithm. | ||
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Statistics
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