High-dimensional graphs and variable selection with the Lasso
NMNicolai MeinshausenPBPeter Bühlmann
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Abstract
The pattern of zero entries in the inverse covariance matrix of a multivariate normal distribution corresponds to conditional independence restrictions between variables. Covariance selection aims at estimating those structural zeros from data. We show that neighborhood selection with the Lasso is a computationally attractive alternative to standard covariance selection for sparse high-dimensional graphs. Neighborhood selection estimates the conditional independence restrictions separately for each node in the graph and is hence equivalent to variable selection for Gaussian linear models. We show that the proposed neighborhood selection scheme is consistent for sparse high-dimensional graphs. Consistency…
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Authors
2- NMNicolai MeinshausenCorresponding
- PBPeter Bühlmann
Topics & keywords
Topics
Keywords
- Lasso (programming language)
- Conditional independence
- Covariance
- Selection (genetic algorithm)
- Multivariate normal distribution
- Feature selection
- Independence (probability theory)
- Gaussian
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