2018 Annual American Control Conference (ACC) 2018
DOI: 10.23919/acc.2018.8430924
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Lasso Regularization Paths for NARMAX Models via Coordinate Descent

Abstract: We propose a new algorithm for estimating NARMAX models with L1 regularization for models represented as a linear combination of basis functions. Due to the L1-norm penalty the Lasso estimation tends to produce some coefficients that are exactly zero and hence gives interpretable models. The novelty of the contribution is the inclusion of error regressors in the Lasso estimation (which yields a nonlinear regression problem). The proposed algorithm uses cyclical coordinate descent to compute the parameters of t… Show more

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Cited by 3 publications
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References 26 publications
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