English

Relevance Vector Machine with Weakly Informative Hyperprior and Extended Predictive Information Criterion

Machine Learning 2020-05-08 v1 Machine Learning

Abstract

In the variational relevance vector machine, the gamma distribution is representative as a hyperprior over the noise precision of automatic relevance determination prior. Instead of the gamma hyperprior, we propose to use the inverse gamma hyperprior with a shape parameter close to zero and a scale parameter not necessary close to zero. This hyperprior is associated with the concept of a weakly informative prior. The effect of this hyperprior is investigated through regression to non-homogeneous data. Because it is difficult to capture the structure of such data with a single kernel function, we apply the multiple kernel method, in which multiple kernel functions with different widths are arranged for input data. We confirm that the degrees of freedom in a model is controlled by adjusting the scale parameter and keeping the shape parameter close to zero. A candidate for selecting the scale parameter is the predictive information criterion. However the estimated model using this criterion seems to cause over-fitting. This is because the multiple kernel method makes the model a situation where the dimension of the model is larger than the data size. To select an appropriate scale parameter even in such a situation, we also propose an extended prediction information criterion. It is confirmed that a multiple kernel relevance vector regression model with good predictive accuracy can be obtained by selecting the scale parameter minimizing extended prediction information criterion.

Keywords

Cite

@article{arxiv.2005.03419,
  title  = {Relevance Vector Machine with Weakly Informative Hyperprior and Extended Predictive Information Criterion},
  author = {Kazuaki. Murayama and Shuichi. Kawano},
  journal= {arXiv preprint arXiv:2005.03419},
  year   = {2020}
}

Comments

29 pages, 12 captioned figures, 23 files of non-captioned figures

R2 v1 2026-06-23T15:22:48.991Z