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post--augmented-rnns's Introduction

Post -- Exploring Bayesian Optimization

Breaking Bayesian Optimization into small, sizable chunks.

To view the rendered version of the post, visit: https://distill.pub/2020/bayesian-optimization/

Authors

Apoorv Agnihotri and Nipun Batra (both IIT Gandhinagar)

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NB - the citations may not appear correctly in the offline render

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post--augmented-rnns's Issues

Diagram Generation

The diagrams on these articles are incredible! I want to generate some for myself. However, your guide doesn't have any information on how you are generating these diagrams. Can you please clarify the process you are using as part of the guide?
Thanks!

Typo in first image (x4 repeated twice)

The first image (with 5 boxes containing A and hover text rnn) has a repeating sequence of (xN, yN) with N going from 0 to 4. However, the last sequence has (x4, x4) where it appears it should be (x4, y4).

Additive or multiplicative attention?

In the "Attentional Interfaces" section, there is a reference to "Bahdanau, et al. 2014: Neural machine translation by jointly learning to align and translate" (figure). In that paper, the attention vector is calculated through a feed-forward network, using the hidden states of the encoder and decoder as input (this is called "additive attention"). However, the schematic diagram of this section shows that the attention vector is calculated by using the dot product between the hidden states of the encoder and decoder (which is known as multiplicative attention). I believe that a short mention / clarification would be of benefit here.

hash change doesn't work

clicking the images after "Four directions stand out as particularly exciting" changes the location hash, but that seems to not do anything

Diagrams not displayed properly

Hi, I'm using macOS Sierra and the latest version of Google Chrome, but the beautiful diagrams in your article don't display properly. Is there a way to fix this?
Thanks in advance!

screenshot 2017-10-15 at 08 35 31

EDIT: Everything seems to work fine, now. ๐Ÿ˜„ I'm closing the issue.

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