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June 2022
Central and Eastern Europe
March 2022
The source used the Ahrefs tool. They searched for 鈥淣FT鈥 in every country and then tallied the country search volume across all terms on the first page of the section 鈥渢erms match.鈥 After that, they calculated the number of monthly searches per 1,000,000 population.
At the same time, using Twitter API and the Snscrape tool, they gathered the tweets matching the queries 鈥淣FT鈥 and 鈥淣FTs.鈥 They ran sentiment analysis using the Hugging Face package and the model developed by Cardiff University. They labeled the tweets as 鈥渘egative鈥 if the probability of 鈥渘egative鈥 is higher than 0.5. To keep only firm results, they dropped the countries with fewer than 50 tweets. Finally, they calculated the hate rate as a proportion of negative tweets.









