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Ben's comment is likely sufficient, but I provide some more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paperHans paper.

Ben's comment is likely sufficient, but I provide some more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

Ben's comment is likely sufficient, but I provide some more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

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Greenparker
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Ben's answercomment is likely sufficient, but I provide some more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

Ben's answer is likely sufficient, but I provide more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

Ben's comment is likely sufficient, but I provide some more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

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Greenparker
  • 16k
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  • 99

Ben's answer is likely sufficient, but I provide more references someone of which areis from before the paper Ben referenced.

AnA Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

Ben's answer is likely sufficient, but I provide more references some which are from before the paper Ben referenced.

An Bayesian elastic net representation proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

Ben's answer is likely sufficient, but I provide more references one of which is from before the paper Ben referenced.

A Bayesian elastic net representation was proposed by Kyung et. al. in their Section 3.1. Although the prior for the regression coefficient $\beta$ was correct, the authors incorrectly wrote down the mixture representation.

A corrected Bayesian model for the elastic net was recently proposed by Roy and Chakraborty (their Equation 6). The authors also go on to present an appropriate Gibbs sampler to sample from the posterior distribution, and show that the Gibbs sampler converges to the stationary distribution at a geometric rate. For this reason, these references might turn out to be useful, in addition to the Hans paper.

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Greenparker
  • 16k
  • 3
  • 51
  • 99
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