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tweet 0.0010344
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content analysis 9.540530000000001E-4
related work 9.41055E-4
current events 9.3719E-4
social media 9.271310000000001E-4
own analysis 9.26581E-4
twitter 9.25474E-4
political domain 9.22704E-4
category classification 9.20312E-4
big events 8.96085E-4
other domains 8.90276E-4
system 8.85342E-4
model 8.84433E-4
words 8.67894E-4
social networks 8.6171E-4
electoral events 8.44895E-4
accurate analysis 8.436909999999999E-4
campaign events 8.42722E-4
stock market 8.404599999999999E-4
common language 8.39511E-4
election results 8.383010000000001E-4
research center 8.261410000000001E-4
promising research 8.24949E-4
