Masked Bayesian Neural Networks : Theoretical Guarantee and its Posterior Inference

  • Kong, Insung
  • Yang, Dongyoon
  • Lee, Jongjin
  • Ohn, Ilsang
  • Baek, Gyuseung
  • 외 1명
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

7

초록

Bayesian approaches for learning deep neural networks (BNN) have been received much attention and successfully applied to various applications. Particularly, BNNs have the merit of having better generalization ability as well as better uncertainty quantification. For the success of BNN, search an appropriate architecture of the neural networks is an important task, and various algorithms to find good sparse neural networks have been proposed. In this paper, we propose a new node-sparse BNN model which has good theoretical properties and is computationally feasible. We prove that the posterior concentration rate to the true model is near minimax optimal and adaptive to the smoothness of the true model. In particular the adaptiveness is the first of its kind for node-sparse BNNs. In addition, we develop a novel MCMC algorithm which makes the Bayesian inference of the node-sparse BNN model feasible in practice.

키워드

REGRESSIONDISTRIBUTIONSCONVERGENCERATES
제목
Masked Bayesian Neural Networks : Theoretical Guarantee and its Posterior Inference
저자
Kong, InsungYang, DongyoonLee, JongjinOhn, IlsangBaek, GyuseungKim, Yongdai
발행일
2023
유형
Proceedings Paper
저널명
Proceedings of Machine Learning Research (PMLR)
202