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Boletim CSP 7 Boletim Pedagógico - CSP (7ª Edição parte 4) Estabeleça um método de estudo! O uso adequado de um método de estudo é favorável à aprendizagem Imagem 1* Escrito por Coordenadoria Sociopedagógica em 30 de abril de 2020. ​ ​ Para ter um melhor desempenho durante os estudos, você pode adotar um método que te ajude a desenvolver seu aprendizado, auxiliando no foco e melhor compreensão dos conteúdos. Para isso, veja abaixo qual método pode servir como ferramenta na sua rotina de estudante em casa. DESTAQUE DO DIA Aprendendo sobre os métodos de estudo: Sistema de Repetição Espaçada Este método é interessante quando precisamos memorizar uma nova informação, mas estamos sempre esquecendo. Quando aprendemos algo novo e não colocamos em prática, com o tempo, teremos dificuldade de nos lembrar do que aprendemos (conforme a curva do esquecimento apresentado na Imagem 2). Isso é natural, é como se ​ ​ nosso cérebro estivesse sempre fazendo uma faxina com as informações que considera desnecessária, ou seja, ele apaga as informações que não colocamos em uso ou que nunca revemos. Imagem 2** Para memorizar uma informação nova, portanto, é necessário que ocorra uma repetição de seu estudo. O ideal é revisitarmos os conteúdos novos com maior frequência no início do aprendizado. Conforme o tempo passa, podemos diminuir a frequência de seu estudo. Esse método de memorização é chamado de Sistema de Repetição Espaçada (SRE). Desde a década de 1930, este sistema sofreu inúmeros incrementos, principalmente com as transformações tecnológicas difundidas, a partir da década de 1980. Com isto, foi possível implantar o SRE em programas que agendam e organizam uma rotina de repetição, fazendo-a no tempo adequado para sua memorização. Mas, é necessário que seja alimentado com informações das quais o usuário necessita aprender. Tem muitos programas disponíveis na internet, citamos alguns para que você possa começar a praticar o SRE: ● Anki ● Mnemosyne ● Synap ● Brainscape ● Pleco Software ● WaniKani ● Cerego ● Quizlet ● Course Hero ● Skritter ● Lingvist ● SuperMemo ● Memrise Mudando o foco Convidamos vocês a conhecerem um pouco mais sobre outros contextos do Brasil nos quais tivemos de lidar com doenças que desafiaram a autoridades competentes e a população brasileira. Acesse o link e confira a edição especial do Jornal da USP: ​ ​ https://jornal.usp.br/ciencias/ciencias-humanas/especial-epidemias-uma-histor ia-das-doencas-e-seu-combate-no-brasil/ Fica a dica Documentário: "Disque Quilombola” ​ Curta-metragem / Documentário / 13 min / São Paulo / 2012 / Classificação Livre “No documentário, a história é contada durante conversas entre crianças de duas comunidades distantes no telefone de lata. O brinquedo proporcionou que as crianças falassem sobre onde vivem, quais são suas raízes, quais músicas ouvem e de que brincam, entre outros assuntos”. Saiba mais: http://www.disquequilombola.com.br/ Principais temas abordados: diversidade étnica-cultural, comunidades quilombolas urbanas e rurais, regionalidade e infância. Imagem 3*** Disponível em: https://www.youtube.com/watch?v=GStv-f_bcfU ​ Imagem 1* https://memokids.com.br/blog/fazer-revisoes-para-provas/ . ​ ​ Imagem 2** https://aprendafalaringles.com.br/sistema-de-repeticao-espacada/. ​ ​ Imagem 3*** https://www.facebook.com/DisqueQuilombola/ ​ ​ Fonte: Adaptado de “Sistema de Repetição Espaçada: o que é e como aplicar esta técnica de memorização: ​ ​ ​ https://aprendafalaringles.com.br/sistema-de-repeticao-espacada/. ​ Não esqueça de lavar bem as mãos, por 20 segundos, com água e sabão. Avenida Clara Gianotti de Souza, 5180, Bairro Agrochá, Registro - SP Site: rgt.ifsp.edu.br .
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