Mediação como Método de Resolução de Conflitos Escolares na Cidadeda Beira, Moçambique

Tesis Materias > Educación Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales Abierto Portugués O mundo contemporâneo está em crise que provoca conflitos. Basta assistir a TV, escutar radio, ler jornal, as redes sociais para dar conta do que se vive na sociedade contemporânea: terrorismo, conflitos políticos, económicos, imperialismo, discriminações, preconceitos… Conflitos e violência manifestam-se com mais frequência na sociedade, na família e na escola, o que torna relevante a pesquisa sobre os conflitos escolares que se expressam de várias maneiras e os seus efeitos, por vezes devastadores, para todos os atores da comunidade escolar, assim como o risco de mergulhar a escola numa crise de legitimidade. O tema desta dissertação, “a mediação como método de resolução de conflitos escolares em Moçambique” é ambicioso e complexo tendo em vista analisar se a mediação, enquanto método alternativo de resolução de conflitos, pode ser usada nos conflitos escolares em Moçambique. Para a concretização deste objetivo geral, estabeleceram-se quatro (4) objetivos específicos: identificar a ocorrência de conflitos escolares em Moçambique; Apontar as fontes e os níveis de conflitos escolares em Moçambique; Descrever a forma como são geridos conflitos escolares em Moçambique; Sugerir a mediação como método de resolução de conflitos escolares em Moçambique. Os resultados analisados revelaram que a desmotivação, a discordância, as diferenças culturais, religiosas e determinados comportamentos de risco tendem a originar conflitos escolares e violência. Para inverter essa tendência é necessária uma filosofia educativa de congregação e de gestão positiva dos conflitos, por meio da qual se possa construir uma cultura de paz no meio escolar. A mediação escolar é concebida, nesta dissertação como um elemento importante dessa filosofia educativa e como uma oportunidade de formação pessoal e social para resolver os conflitos do dia-a-dia e promover uma cultura de paz. As conclusões deste estudo traduzem-se em várias sugestões práticas, nomeadamente a criação e implementação de um departamento de serviços de apoio ao aluno (DSAA), como espaço de convívio, onde os alunos possam ter e sentir a liberdade de expressão para resolver as suas diferenças. metadata Médard, Biembe Bakamba mail mbiembebakamba@yahoo.fr (2020) Mediação como Método de Resolução de Conflitos Escolares na Cidadeda Beira, Moçambique. Doctoral thesis, Universidad Internacional Iberoamericana.

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Resumen

O mundo contemporâneo está em crise que provoca conflitos. Basta assistir a TV, escutar radio, ler jornal, as redes sociais para dar conta do que se vive na sociedade contemporânea: terrorismo, conflitos políticos, económicos, imperialismo, discriminações, preconceitos… Conflitos e violência manifestam-se com mais frequência na sociedade, na família e na escola, o que torna relevante a pesquisa sobre os conflitos escolares que se expressam de várias maneiras e os seus efeitos, por vezes devastadores, para todos os atores da comunidade escolar, assim como o risco de mergulhar a escola numa crise de legitimidade. O tema desta dissertação, “a mediação como método de resolução de conflitos escolares em Moçambique” é ambicioso e complexo tendo em vista analisar se a mediação, enquanto método alternativo de resolução de conflitos, pode ser usada nos conflitos escolares em Moçambique. Para a concretização deste objetivo geral, estabeleceram-se quatro (4) objetivos específicos: identificar a ocorrência de conflitos escolares em Moçambique; Apontar as fontes e os níveis de conflitos escolares em Moçambique; Descrever a forma como são geridos conflitos escolares em Moçambique; Sugerir a mediação como método de resolução de conflitos escolares em Moçambique. Os resultados analisados revelaram que a desmotivação, a discordância, as diferenças culturais, religiosas e determinados comportamentos de risco tendem a originar conflitos escolares e violência. Para inverter essa tendência é necessária uma filosofia educativa de congregação e de gestão positiva dos conflitos, por meio da qual se possa construir uma cultura de paz no meio escolar. A mediação escolar é concebida, nesta dissertação como um elemento importante dessa filosofia educativa e como uma oportunidade de formação pessoal e social para resolver os conflitos do dia-a-dia e promover uma cultura de paz. As conclusões deste estudo traduzem-se em várias sugestões práticas, nomeadamente a criação e implementação de um departamento de serviços de apoio ao aluno (DSAA), como espaço de convívio, onde os alunos possam ter e sentir a liberdade de expressão para resolver as suas diferenças.

Tipo de Documento: Tesis (Doctoral)
Palabras Clave: Mediação escolar, Conflito, Gestão de conflitos, Escolas da cidade da Beira, Departamento de serviços de apoio ao aluno.
Clasificación temática: Materias > Educación
Divisiones: Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales
Depositado: 31 Ene 2022 23:55
Ultima Modificación: 26 May 2022 23:55
URI: https://repositorio.unini.edu.mx/id/eprint/462

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