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fhamborg committed Oct 11, 2023
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Expand Up @@ -13,11 +13,11 @@ news-please also features a library mode, which allows Python developers to use
If you want to contribute to news-please, please first read [here](#contributions).

## Announcements
10/11/2023: If you're interested in text annotation software, check out [textada](https://textada.com/) - an AI-powered text annotation tool. Add your documents and categories, do some manual annotations, and let the AI do the work for you. The university-based project is not open source, but free to use.
10/11/2023: If you're interested in **text annotation software**, check out [textada](https://textada.com/) - an AI-powered text annotation tool. Add your documents and categories, do some manual annotations, and let the AI do the work for you. The university-based project is not open source, but free to use.

03/23/2021: If you're interested in sentiment classification in news articles, check out our large-scale dataset for target-dependent sentiment classification. We also publish an easy-to-use neural model that achieves state-of-the-art performance. Visit the project [here](https://github.com/fhamborg/NewsMTSC).
03/23/2021: If you're interested in **sentiment classification** in news articles, check out our large-scale dataset for target-dependent sentiment classification. We also publish an easy-to-use neural model that achieves state-of-the-art performance. Visit the project [here](https://github.com/fhamborg/NewsMTSC).

06/01/2018: If you're interested in news analysis, you might also want to check out our new project, [Giveme5W1H](https://github.com/fhamborg/Giveme5W1H) - a tool that extracts phrases answering the journalistic five W and one H questions to describe an article's main event, i.e., who did what, when, where, why, and how.
06/01/2018: If you're interested in **event extraction** from news, you might also want to check out our new project, [Giveme5W1H](https://github.com/fhamborg/Giveme5W1H) - a tool that extracts phrases answering the journalistic five W and one H questions to describe an article's main event, i.e., who did what, when, where, why, and how.

## Extracted information
news-please extracts the following attributes from news articles. An examplary json file as extracted by news-please can be found [here](https://github.com/fhamborg/news-please/blob/master/newsplease/examples/sample.json).
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