Jialin Lu

<aside> 📎 Jialin LU, Feb 2020 This is presented at the group meeting of Ester's lab.

</aside>

Basically this is an outsider who does not work on Bayesian methods, but somehow was volunteered to do a survey and give a presentation of the pros/cons of Bayesian Deep Learning. I will not talk about the math, but only the ideas intuitively.


Please see the typesetted pdf if you prefer reading as a short paper.

This is a supplementary version in PDF.

This is a supplementary version in PDF.

This is the corresponding slide for the presentation

This is the corresponding slide for the presentation

<aside> 💡 A reminder: if you are not into the long blog, you can first look at the supplementary pdf listed left-side, which is self-contained and should provide the main idea.

</aside>


Why I am doing this

Lab mates at NeurIPS 2019 (I am the one in the rightest, wearing the volunteer shirt)

Lab mates at NeurIPS 2019 (I am the one in the rightest, wearing the volunteer shirt)

<aside> 💡 There will be no math, I will try to convey only the intuitive way for understanding.

</aside>

But anyway I read some papers and organize a short survey into this topic of Bayesian Deep Learning. The outline of this post can be summarized as follows

Introduction

Part 1: Bayesian Deep Learning, but why?

Motivations for combining Bayesian learning and deep learning

Bayesian Learning is great, deep learning is also great.