Novotny, 2019 - Google Patents
Twitter bot detection & categorization-a comparative study of machine learning methodsNovotny, 2019
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- 8034028260296716087
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- Novotny J
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Automated Twitter accounts, or Twitter bots, have gained increased attention lately. In particular, a novel type of bot, so called social bots, are piquing peoples' interest, as these bots have recently been involved in a number of political events. Most of the previous work …
- 238000010801 machine learning 0 title abstract description 13
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