Improved PAC-Bayesian Bounds for Linear Regression.

Authors
  • SHALAEVA Vera
  • FAKHRIZADEH ESFAHANI Alireza
  • GERMAIN Pascal
  • PETRECZKY Mihaly
Publication date
2020
Publication type
Proceedings Article
Summary In this paper, we improve the PAC-Bayesian error bound for linear regression derived in Germain et al. [10]. The improvements are twofold. First, the proposed error bound is tighter, and converges to the generalization loss with a well-chosen temperature parameter. Second, the error bound also holds for training data that are not independently sampled. In particular, the error bound applies to certain time series generated by well-known classes of dynamical models, such as ARX models.
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