A violência doméstica no município da Cela, província do Cuanza-Sul –Angola: um fenómeno que tem preocupado o governo e a sociedade

Artículo Materias > Ciencias Sociales Universidad Internacional Iberoamericana México > Investigación > Artículos y libros
Universidad Internacional Iberoamericana Puerto Rico > Investigación > Producción Científica
Abierto Portugués A família constitui o núcleo fundamental de uma sociedade, constituída por um grupo sanguíneo onde se transmitem valores morais e culturais e a Educação formal e informal, são pilares fundamentais para que ela guie-se. Partindo sempre do princípio de que, quem educa uma mulher, está educar uma sociedade. A desestruturação da família, têm causado vários transtornos nos lares e vários investigadores apontam o surgimento da violência doméstica como principal causa e depois, surge a delinquência nos filhos. Desta forma, ao longo do presente estudo, vários autores defenderam como principais causa do fenómeno violência domestica, o consumo excessivo de bebidas alcoólicas, a perda de valores religiosos, a infidelidade conjugal, o baixo nível de escolaridade entre os parceiros, a pobreza, acusações de feitiçaria, o desemprego etc. O presente trabalho de campo e de natureza exploratória com abordagem quanti-qualitativa, enquanto produto de uma investigação bibliográfica e empírica, tem como objectivo reflectir sobre o processo de enfrentamento à violência contra as mulheres no Município da Cela, Província do Cuanza Sul. Para o desenvolvimento do mesmo, entrevistou-se um grupo focal de 14 mulheres, 6 homens com uma amostra de 20 participantes, entre eles, autoridades tradicionais, religiosas, membros da sociedade civil e da Direcção Municipal da Família e Promoção da Mulher, membros ligados aos Serviços de Investigação Criminal do Município da Cela, A colecta de dados ocorreu de Outubro á Novembro de 2021 metadata Graça da Costa, Mario; Bailão Pio Carlos, Edna Martinha y Santos e Campos, María Aparecida mail SIN ESPECIFICAR, SIN ESPECIFICAR, maria.santos@unini.edu.mx (2022) A violência doméstica no município da Cela, província do Cuanza-Sul –Angola: um fenómeno que tem preocupado o governo e a sociedade. Revista Ibero-Americana de Humanidades, Ciências e Educação, 8 (4). pp. 30-62. ISSN 2675-3375

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A família constitui o núcleo fundamental de uma sociedade, constituída por um grupo sanguíneo onde se transmitem valores morais e culturais e a Educação formal e informal, são pilares fundamentais para que ela guie-se. Partindo sempre do princípio de que, quem educa uma mulher, está educar uma sociedade. A desestruturação da família, têm causado vários transtornos nos lares e vários investigadores apontam o surgimento da violência doméstica como principal causa e depois, surge a delinquência nos filhos. Desta forma, ao longo do presente estudo, vários autores defenderam como principais causa do fenómeno violência domestica, o consumo excessivo de bebidas alcoólicas, a perda de valores religiosos, a infidelidade conjugal, o baixo nível de escolaridade entre os parceiros, a pobreza, acusações de feitiçaria, o desemprego etc. O presente trabalho de campo e de natureza exploratória com abordagem quanti-qualitativa, enquanto produto de uma investigação bibliográfica e empírica, tem como objectivo reflectir sobre o processo de enfrentamento à violência contra as mulheres no Município da Cela, Província do Cuanza Sul. Para o desenvolvimento do mesmo, entrevistou-se um grupo focal de 14 mulheres, 6 homens com uma amostra de 20 participantes, entre eles, autoridades tradicionais, religiosas, membros da sociedade civil e da Direcção Municipal da Família e Promoção da Mulher, membros ligados aos Serviços de Investigação Criminal do Município da Cela, A colecta de dados ocorreu de Outubro á Novembro de 2021

Tipo de Documento: Artículo
Palabras Clave: Violência; Valores Culturais; Fenómeno; Família; Promoção da mulher
Clasificación temática: Materias > Ciencias Sociales
Divisiones: Universidad Internacional Iberoamericana México > Investigación > Artículos y libros
Universidad Internacional Iberoamericana Puerto Rico > Investigación > Producción Científica
Depositado: 17 Feb 2023 23:30
Ultima Modificación: 17 Feb 2023 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/5924

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Influence of E-learning training on the acquisition of competences in basketball coaches in Cantabria

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In the last decades, the world population and demand for any kind of product have grown exponentially. The rhythm of production to satisfy the request of the population has become unsustainable and the concept of the linear economy, introduced after the Industrial Revolution, has been replaced by a new economic approach, the circular economy. In this new economic model, the concept of “the end of life” is substituted by the concept of restoration, providing a new life to many industrial wastes. Leaves are a by-product of several agricultural cultivations. In recent years, the scientific interest regarding leaf biochemical composition grew, recording that plant leaves may be considered an alternative source of bioactive substances. Plant leaves’ main bioactive compounds are similar to those in fruits, i.e., phenolic acids and esters, flavonols, anthocyanins, and procyanidins. Bioactive compounds can positively influence human health; in fact, it is no coincidence that the leaves were used by our ancestors as a natural remedy for various pathological conditions. Therefore, leaves can be exploited to manufacture many products in food (e.g., being incorporated in food formulations as natural antioxidants, or used to create edible coatings or films for food packaging), cosmetic and pharmaceutical industries (e.g., promising ingredients in anti-aging cosmetics such as oils, serums, dermatological creams, bath gels, and other products). This review focuses on the leaves’ main bioactive compounds and their beneficial health effects, indicating their applications until today to enhance them as a harvesting by-product and highlight their possible reuse for new potential healthy products.

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