Análise das eleições na Colômbia e Venezuela 2015 através de análise de sentimento e Twitter
DOI:
https://doi.org/10.18046/syt.v14i39.2349Palavras-chave:
Análise de sentimento, eleições políticas, linguagem natural, Twitter, Apicultor.Resumo
Este artigo apresenta uma análise das contas dos principais candidatos às eleições regionais de 25 de Outubro, 2015, em Colômbia (Bogotá, Medellín e Cali) e os hashtag oficiais dos dois principais partidos para as eleições parlamentares de 06 de dezembro de 2015 na Venezuela ( MUD e PSUV), a fim de determinar as tendências positivas ou negativas e compará-las com os resultados das respectivas eleições. Para o desenvolvimento da análise foi utilizada a técnica de análise de sentimento, típica da mineração de dados, bem como estatísticas descritivas; conclui-se que a análise de sentimento para estimar tendências, requer processos que permitam monitorar os retweets, a fim de esperar resultados aceitáveis.
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