Hamshahri Corpus

The Hamshahri Corpus (Persian: پیکره همشهری) is a sizable Persian corpus based on the Iranian newspaper Hamshahri, one of the first online Persian-language newspapers in Iran. It was initially collected and compiled by Ehsan Darrudi at DBRG Group[1] of University of Tehran. Later, a team headed by Ale Ahmad[2] built on this corpus and created the first Persian text collection suitable for information retrieval evaluation tasks.

Hamshahri Corpus logo

This corpus was created by crawling the online news articles from the Hamshahri's website and processing the HTML pages to create a standard text corpus for modern Information retrieval experiments.

Version 1.0

The collection contains more than 160,000 articles covering the following subject categories: politics, city news, economics, reports, editorials, literature, sciences, society, foreign news, sports, etc. The size of the documents varies from short news (under 1 KB) to rather long articles (e.g. 140 KB) with the average size of 1.8 KB.

The corpus is available in several formats for download:[2]

  • Tagged Text: 560 MB
  • In SQL Server 2000 Tables: 712 MB

Version 2.0

The second release of the Hamshahri Corpus was launched on 20 October 2008. It offers several new features and improvements:

  • More News: 323,616 Text Stories in 3206 XML files (one file for each day)
  • Increased Time Span: from 22 June 1996 to 13 May 2007
  • Bigger in Size: 1.42 GB uncompressed
  • Standard Container: Unicode XML
  • Included Images: images have been extracted from the news and preserved (available in an additional package), which makes it suitable for Image Retrieval tasks.
  • Categorized News: the news stories have been categorized semi-automatically (appropriate for Text Categorization and Classification tasks).

The corpus is available for download in XML format.

gollark: Hmmmm...
gollark: So the optimal approach would probably either be something like long-term boring trading humans won't do which works on large amounts of the market, or relatively high-speed reaction to new memes.
gollark: I've been considering bots, and they have some advantages:- they can respond faster than humans, probably- they can process vast amounts of financial databut some disadvantages:- they can't practically actually react to the content of a meme, only some metadata- I think there's comment rate limiting so they can't post that often
gollark: Hmm, yes, and it's more based on "popular meme creator who pings someone on an important server" than "good meme", I guess.
gollark: I suppose the profitable thing to do would be... to try and create interesting meme templates?

See also

References

  1. DBRG News Database Research Group
  2. Hamshahri Database Research Group
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