Papers with Code + arXiv = Reproducible, Organized Research. Through a joint collaboration, Papers with Code now provides category classification and code references for articles in the arXiv database
Millions of scientific articles are shared openly via arXiv, a Cornell-powered website that focuses on open access to research. The Papers with Code website hosts academic papers that also share their backing software so that experiments can be faithfully reproduced. Through a joint collaboration, Papers with Code now provides category classification and code references for articles in the arXiv database.
We all love arXiv. Despite some quirks here and there, the premise is fantastic. The website provides an open-access archive to physics, mathematics, computer science, quantitative biology, quantitative finance, statistics, electrical engineering and systems science, and economics. As of October 2020, the site has over 1.7 million articles published. Anybody can access these articles at any time for no cost. This enables knowledge to be shared at a rate unheard of in previous generations, while still maintaining author attribution for credit assignment purposes.
Previously, new research developments mainly spread through the use of academic journals, which were human-prepared and likely not free. While this process achieves the organization and sharing of information, it is biased and it is exclusive. The process is biased due to the collective biases of the workers that prepared the journals, accepting some, and rejecting others. Of course, this likely works more often than it doesn’t; however, I believe it’s far from perfect. Additionally, the process is exclusive because it puts a price tag on obtaining the information. Yes, the world runs on exchanging items of value. That does not mean that value must be a currency, nor does it mean that the currency must come directly from the end consumers.
The development of arXiv aids the movement towards freer information flow in the world. With this site, ground-breaking research can now disseminate through the world as fast as the internet’s cables can pump it. Additionally, due to the open nature of the website, anyone can use the arXiv API to programmatically peruse the articles. Once you have an API, you. have a data set. Once you have a data set, you have the potential for beautiful visualizations, such as this one.
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