Home Technology peripherals AI arXiv papers can be posted as 'barrage', Stanford alphaXiv discussion platform is online, LeCun likes it

arXiv papers can be posted as 'barrage', Stanford alphaXiv discussion platform is online, LeCun likes it

Aug 01, 2024 pm 05:18 PM
project arxiv alphaXiv

Cheers!

What is it like when a paper discussion is down to words?

Recently, students at Stanford University created alphaXiv, an open discussion forum for arXiv papers that allows questions and comments to be posted directly on any arXiv paper.

Website link: https://alphaxiv.org/

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

In fact, you don’t need to visit this website specifically. Just change arXiv in any URL to alphaXiv to open the corresponding paper directly on the alphaXiv forum:

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

You can accurately locate paragraphs and sentences in the paper:

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

In the discussion area on the right, users can post questions to ask the author about the ideas and details of the paper, such as:

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

You can also comment on the content of the paper, For example: "It would be instructive to give at least one mathematical problem and its solution as an example."

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

Users can also respond to, like, and dislike a comment:

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

For this, the Turing Award The winner, Yann LeCun, also thought it was very nice.

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

We found that many paper authors have praised the alphaXiv forum. For example, a recently published paper "KAN or MLP: A Fairer Comparison" has received some discussion on alphaXiv. The first author of the paper, Runpeng Yu, tweeted that it will be published on alphaXiv to answer everyone’s questions.

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

As netizens said: "AlphaXiv makes research easy to collaborate" and promotes academic exchanges.

arXiv papers can be posted as barrage, Stanford alphaXiv discussion platform is online, LeCun likes it

Such a convenient paper exchange platform, interested readers should try it.

Reference link:
https://twitter.com/StanfordAILab/status/1818669016325800216

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