Desafios na interação digital dos cidadãos com o Estado: uma escala para medir os obstáculos administrativos
Palavras-chave:
auxílio emergencial, análise fatorial, measurement invariance, obstáculos administrativosResumo
Em sua interação com o Estado, os cidadãos frequentemente enfrentam desafios como formulários de elegibilidade, requisitos e regras sem sentido. Estes encargos podem impedir o acesso aos benefícios públicos, particularmente para os pobres, que são vistos como desmerecedores e têm pouco capital social ou humano. Alguns argumentos defendem aplicativos e websites móveis para facilitar o acesso de determinados grupos sociais, mas a tecnologia também pode trazer novos desafios para eles como altos custos, ameaças à privacidade e custos de tempo/emocionais. Este artigo procura desenvolver uma nova escala para medir os encargos administrativos para os cidadãos que se candidatam a benefícios sociais através da interação digital com o Estado. Uma amostra de 413 entrevistados foi utilizada através de grupos do Facebook dedicados a discutir o Auxílio emergencial brasileiro. Os resultados mostraram uma escala com forte confiabilidade e validade, apesar de haver limitações que precisam ser endereçadas em pesquisas futuras.
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