A Variational View on Bootstrap Ensembles as Bayesian Inference
- URL: http://arxiv.org/abs/2006.04548v1
- Date: Mon, 8 Jun 2020 13:01:37 GMT
- Title: A Variational View on Bootstrap Ensembles as Bayesian Inference
- Authors: Dimitrios Milios, Pietro Michiardi, Maurizio Filippone
- Abstract summary: We consider an ensemble-based scheme where each model/particle corresponds to a perturbation of the data by means of parametric bootstrap and a perturbation of the prior.
Experiments confirm that ensemble methods can be a valid alternative to approximate Bayesian inference.
- Score: 24.55506395666038
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we employ variational arguments to establish a connection
between ensemble methods for Neural Networks and Bayesian inference. We
consider an ensemble-based scheme where each model/particle corresponds to a
perturbation of the data by means of parametric bootstrap and a perturbation of
the prior. We derive conditions under which any optimization steps of the
particles makes the associated distribution reduce its divergence to the
posterior over model parameters. Such conditions do not require any particular
form for the approximation and they are purely geometrical, giving insights on
the behavior of the ensemble on a number of interesting models such as Neural
Networks with ReLU activations. Experiments confirm that ensemble methods can
be a valid alternative to approximate Bayesian inference; the theoretical
developments in the paper seek to explain this behavior.
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