Thank you for comments and suggestions Stu and Arkaitz. I am currently experimenting with Discovertext, which certainly looks like a very comprehensive tool. Thank you, Khan On Sat, Aug 4, 2018 at 12:06 AM, Arkaitz Zubiaga <arkaitz@zubiaga.org> wrote:
On Fri, 3 Aug 2018 at 13:00, Shulman, Stu <stu@texifter.com> wrote:
Finally, Twitter. It is the best bet, but filtering by location data
means
(not insignificantly) that you exclude the vast majority of Tweets from your data.
For Twitter you may want to check the country-level classifier we developed: https://ieeexplore.ieee.org/document/7913605/
Code available here: https://github.com/azubiaga/tweet-country-classification
This generalises very well to infer the country of origin on Twitter timelines with no/limited geolocation data.
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